406 results
Search Results
2. Bibliometric Analysis on the Safety of Autonomous Vehicles with Artificial Intelligence
- Author
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Kim, Hak Jun, Duffy, Vincent G., Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Woeginger, Gerhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Stephanidis, Constantine, editor, Duffy, Vincent G., editor, Krömker, Heidi, editor, Fui-Hoon Nah, Fiona, editor, Siau, Keng, editor, Salvendy, Gavriel, editor, and Wei, June, editor
- Published
- 2021
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3. The Analysis of Worldwide Research on Artificial Intelligence Assisted User Modeling
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Chen, Xieling, Gao, Dongfa, Lun, Yonghui, Zhou, Dingli, Hao, Tianyong, Xie, Haoran, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Woeginger, Gerhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Popescu, Elvira, editor, Hao, Tianyong, editor, Hsu, Ting-Chia, editor, Xie, Haoran, editor, Temperini, Marco, editor, and Chen, Wei, editor
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- 2020
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4. Trends and Features of Human Brain Research Using Artificial Intelligence Techniques: A Bibliometric Approach
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Chen, Xieling, Zhang, Xinxin, Xie, Haoran, Wang, Fu Lee, Yan, Jun, Hao, Tianyong, Barbosa, Simone Diniz Junqueira, Editorial Board Member, Filipe, Joaquim, Editorial Board Member, Ghosh, Ashish, Editorial Board Member, Kotenko, Igor, Editorial Board Member, Zhou, Lizhu, Editorial Board Member, Zeng, An, editor, Pan, Dan, editor, Hao, Tianyong, editor, Zhang, Daoqiang, editor, Shi, Yiyu, editor, and Song, Xiaowei, editor
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- 2019
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5. An Intelligent Prediction of the Next Highly Cited Paper Using Machine Learning.
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Bin Makhashen, Galal M. and Al-Jamimi, Hamdi A.
- Abstract
Highly cited articles capture the attention of significant contributors in the research community as an opportunity to improve knowledge, source of ideas or solutions, and advance their research in general. Typically, these articles are authored by a large number of scientists with international collaboration. However, this could not be the only reason for an article to be highly cited, there might be several other characteristics for an article to be more attractive to researchers and readers. In other words, there are a few other characteristics that help articles/papers to be more than others to appear in search engines or to grab readers’ attention. In this study, we modeled several machine-learning methods with a set of articles, and journal characteristics including authors-count, title characteristics, abstract length, international collaboration, number of keywords, funding information, journal characteristics, etc. We extracted 20 characteristics and developed multiple machine-learning models to automate highly-cited papers recognition from regular papers. In experiments conducted with an ensemble machine learning algorithm, 97% recognition accuracy was achieved. Other algorithms including a deep learning method using LSTMs also achieved high recognition accuracy. Such high performances can be utilized for a promising HCP auto-detection system in the future. [ABSTRACT FROM AUTHOR]
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- 2023
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6. Predicting Research Trend Based on Bibliometric Analysis and Paper Ranking Algorithm
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Nguyen, Viet T., Kravets, Alla G., Duong, Tu Q. H., Kacprzyk, Janusz, Series Editor, Kravets, Alla G., editor, Bolshakov, Alexander A., editor, and Shcherbakov, Maxim V., editor
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- 2021
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7. The Research Interest in ChatGPT and Other Natural Language Processing Tools from a Public Health Perspective: A Bibliometric Analysis.
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Favara, Giuliana, Barchitta, Martina, Maugeri, Andrea, Magnano San Lio, Roberta, and Agodi, Antonella
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BIBLIOMETRICS ,CHATGPT ,NATURAL language processing ,DATABASES ,PUBLIC health ,CONFERENCE papers - Abstract
Background: Natural language processing, such as ChatGPT, demonstrates growing potential across numerous research scenarios, also raising interest in its applications in public health and epidemiology. Here, we applied a bibliometric analysis for a systematic assessment of the current literature related to the applications of ChatGPT in epidemiology and public health. Methods: A bibliometric analysis was conducted on the Biblioshiny web-app, by collecting original articles indexed in the Scopus database between 2010 and 2023. Results: On a total of 3431 original medical articles, "Article" and "Conference paper", mostly constituting the total of retrieved documents, highlighting that the term "ChatGPT" becomes an interesting topic from 2023. The annual publications escalated from 39 in 2010 to 719 in 2023, with an average annual growth rate of 25.1%. In terms of country production over time, the USA led with the highest overall production from 2010 to 2023. Concerning citations, the most frequently cited countries were the USA, UK, and China. Interestingly, Harvard Medical School emerges as the leading contributor, accounting for 18% of all articles among the top ten affiliations. Conclusions: Our study provides an overall examination of the existing research interest in ChatGPT's applications for public health by outlining pivotal themes and uncovering emerging trends. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Artificial intelligence and organizational agility: An analysis of scientific production and future trends.
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Atienza-Barba, María, del Río-Rama, María de la Cruz, Meseguer-Martínez, Ángel, and Barba-Sánchez, Virginia
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ARTIFICIAL intelligence ,BIBLIOMETRICS ,DIGITAL transformation ,CONFERENCE papers ,SCIENTIFIC community - Abstract
The advancement of Artificial Intelligence (AI) is progressing rapidly, compelling companies to integrate it within their operational frameworks to sustain competitiveness, primarily driven by its impact on organizational agility (OA). Nevertheless, the absence of a robust theoretical framework underscores the limited understanding of the relationship between AI and OA. Within this context, the research aims to establish foundational knowledge, delineate the evolutionary trajectory of the topic, and identify prospective avenues for inquiry. To achieve this objective, bibliometric analysis is employed to gain comprehensive insights into the interplay between these variables and discern trends within this research domain. The utilization of the Web of Science (WoS) and Scopus databases up to January 2024 facilitates data collection, while Bibliometrix and Visme are instrumental in crafting a scientific production map. The analysis corroborates the novelty and growth potential of the subject matter, underscoring heightened author interest, particularly evident in 2023, against a backdrop of sparse and temporally dispersed publications until 2017. Notably, the prevalence of conference papers on this topic stands significantly high at 26.98 % in comparison to the total contributions, indicative of the research community's engagement. Furthermore, the findings underscore a robust association between the keywords AI and OA, delineating a burgeoning research domain that converges with the digital transformation of enterprises and the Theory of Standardization Process. The effective integration of AI into corporate operational frameworks marks the zenith of this transformative process, ushering in the genesis and overhaul of organizational routines. This study represents a pioneering endeavour within the literature, as it constitutes the inaugural bibliometric exploration of this subject matter. Moreover, it serves to underpin the establishment of theoretical underpinnings for future research endeavours as it outlines current trends and emerging future research trajectories, concerning the role of AI in OA. [ABSTRACT FROM AUTHOR]
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- 2024
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9. An overview of chatbots in tourism and hospitality using bibliometric and thematic content analysis
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Yılmaz, Gökhan and Şahin-Yılmaz, Ayşe
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- 2024
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10. A holistic approach to artificial intelligence-related research in the transportation system: bibliometric analysis
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Şengöz, Ayşe, Orhun, Beste Nisa, and Konyalilar, Nil
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- 2024
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11. Laser pyrolysis in papers and patents
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Davide Russo, Riccardo Degl'Innocenti, and Christian Spreafico
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Laser pyrolysis ,Computer science ,Context (language use) ,02 engineering and technology ,010402 general chemistry ,01 natural sciences ,Industrial and Manufacturing Engineering ,law.invention ,Bibliometric analysis ,Artificial Intelligence ,law ,Settore ING-IND/15 - Disegno e Metodi dell'Ingegneria Industriale ,Process engineering ,Patents ,Co2 laser ,business.industry ,021001 nanoscience & nanotechnology ,Laser ,Pyrolysis ,0104 chemical sciences ,0210 nano-technology ,business ,Software ,Waste disposal - Abstract
This paper presents a critical review of laser pyrolysis. Although this technology is almost 60 years old, in literature many researchers, both from academia and industry, are still developing and improving it. On the contrary industrial applications are struggling to take off, if not in very restricted areas, although the technology has undoubted advantages that justify future development. The aim of this work consists in analysing a representative pool of scientific papers (230) and patents (121), from the last 20 years, to have an overview about the evolution of the method and try to understand the efforts spent to improve this technology effectively in academia and in industry. This study is important to provide a complete review about the argument, still missing in the literature. The objective is to provide an overview sufficiently broad and representative in the sources and to capture all the main ways in which laser pyrolysis has been used and with what distribution. The main focuses of the study are the analyses of the functions carried out by laser technologies, the application fields, and the types of used laser (i.e. models, power and fluence). Among the main results, the study showed that the main use of laser pyrolysis is to produce nanoparticles and coatings, the main materials worked by laser pyrolysis are silicon and carbon dioxide and the main searched properties in the products of laser pyrolysis are catalysts activity and electrical conductivity. CO2 lasers are the most used and the have high versatility compared to others. In conclusion, the study showed that laser pyrolysis is a consolidated technology within its main application fields (nanoparticles and coatings) for several years. Within this context, the technology has been developed on very different sizes and processes, obtaining a very wide range of results. Finally, these results may also have stimulated new areas of experimentation that emerged mainly in recent years and which concern biomedical applications, additive manufacturing, and waste disposal. Graphical abstract
- Published
- 2022
12. The use of artificial intelligence to advance sustainable supply chain: retrospective and future avenues explored through bibliometric analysis.
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Zejjari, Ibtissam and Benhayoun, Issam
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BIBLIOMETRICS ,TECHNOLOGICAL innovations ,ARTIFICIAL intelligence ,SUPPLY chains ,SCIENCE databases - Abstract
Keeping up with the hastily growing economy implies undergoing unremitting transformation permanently. In the field of supply chain, such progress can only be guaranteed via the exploration of new horizons and innovative solutions in response to the constraints of the global market. Emerging technologies, particularly artificial intelligence, offer promising avenues for enhancing supply chain processes, with sustainability ascending as a critical consideration. Despite the recent surfacing of AI-driven applications, scant attention has been devoted to exploring their full potential within supply chain operations, particularly in conjunction with SDGs. Recognizing the untapped opportunities presented by the implementation of AI for a sustainable supply chain this study undertakes a bibliometric analysis of 236 research papers sourced from the Web of science database. The analysis utilizes R language BiblioShiny to examine the extracted papers, and dissect patterns, trends, and relationships among key concepts and themes as well as prominent topics, impactful authors, and leading journals and countries in this domain. The findings reveal substantial growth in research related to SCM, AI, and sustainability as the UK leads this field of study with 132 articles followed by India, China and the USA. Eventually, the National University of Singapore came first in terms of paper affiliations, followed by De La Salle University, and London Metropolitan University. These results only prove that sustainability is becoming more critical in the equation of AI-driven supply chains especially with the current socio-political and economic circumstances, constituting a solid base for further academic research and more innovations in the managerial and business-related policies in this field. [ABSTRACT FROM AUTHOR]
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- 2024
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13. Artificial intelligence in personalised learning: a bibliometric analysis
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Li, Kam Cheong and Wong, Billy Tak-Ming
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- 2023
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14. Model-Based Learning Analytics for a Partnership of Teachers and Intelligent Systems: A Bibliometric Systematic Review.
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Pishtari, Gerti, Ley, Tobias, Khalil, Mohammad, Kasepalu, Reet, and Tuvi, Iiris
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ARTIFICIAL intelligence ,BIBLIOTHERAPY ,TEACHER development ,INTELLIGENT tutoring systems ,LEARNING ,TEACHERS - Abstract
This paper presents a bibliometric systematic review on model-based learning analytics (MbLA), which enable coupling between teachers and intelligent systems to support the learning process. This is achieved through systems that make their models of student learning and instruction transparent to teachers. We use bibliometric network analysis and topic modelling to explore the synergies between the related research groups and the main research topics considered in the 42 reviewed papers. Network analysis depicts an early stage community, made up of several research groups, mainly from the fields of learning analytics and intelligent tutoring systems, which have had little explicit and implicit collaboration but do share a common core literature. Th resulting topics from the topic modelling can be grouped into the ones related to teacher practices, such as awareness and reflection, learning orchestration, or assessment frameworks, and the ones related to the technology used to open up the models to teachers, such as dashboards or adaptive learning architectures. Moreover, results show that research in MbLA has taken an individualistic approach to student learning and instruction, neglecting social aspects and elements of collaborative learning. To advance research in MbLA, future research should focus on hybrid teacher–AI approaches that foster the partnership between teachers and technology to support the learning process, involve teachers in the development cycle from an early stage, and follow an interdisciplinary approach. [ABSTRACT FROM AUTHOR]
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- 2023
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15. Numbers Do Not Lie: A Bibliometric Examination of Machine Learning Techniques in Fake News Research.
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Sandu, Andra, Ioanăș, Ioana, Delcea, Camelia, Florescu, Margareta-Stela, and Cotfas, Liviu-Adrian
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FAKE news ,MACHINE learning ,BIBLIOMETRICS ,WEB analytics ,RESEARCH personnel ,ELECTRONIC publications ,NEWS websites - Abstract
Fake news is an explosive subject, being undoubtedly among the most controversial and difficult challenges facing society in the present-day environment of technology and information, which greatly affects the individuals who are vulnerable and easily influenced, shaping their decisions, actions, and even beliefs. In the course of discussing the gravity and dissemination of the fake news phenomenon, this article aims to clarify the distinctions between fake news, misinformation, and disinformation, along with conducting a thorough analysis of the most widely read academic papers that have tackled the topic of fake news research using various machine learning techniques. Utilizing specific keywords for dataset extraction from Clarivate Analytics' Web of Science Core Collection, the bibliometric analysis spans six years, offering valuable insights aimed at identifying key trends, methodologies, and notable strategies within this multidisciplinary field. The analysis encompasses the examination of prolific authors, prominent journals, collaborative efforts, prior publications, covered subjects, keywords, bigrams, trigrams, theme maps, co-occurrence networks, and various other relevant topics. One noteworthy aspect related to the extracted dataset is the remarkable growth rate observed in association with the analyzed subject, indicating an impressive increase of 179.31%. The growth rate value, coupled with the relatively short timeframe, further emphasizes the research community's keen interest in this subject. In light of these findings, the paper draws attention to key contributions and gaps in the existing literature, providing researchers and decision-makers innovative viewpoints and perspectives on the ongoing battle against the spread of fake news in the age of information. [ABSTRACT FROM AUTHOR]
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- 2024
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16. Industry 4.0 Transformation: Analysing the Impact of Artificial Intelligence on the Banking Sector through Bibliometric Trends.
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Manta, Alina Georgiana, Bădîrcea, Roxana Maria, Doran, Nicoleta Mihaela, Badareu, Gabriela, Gherțescu, Claudia, and Popescu, Jenica
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ARTIFICIAL intelligence ,BANKING industry ,INDUSTRY 4.0 ,BIBLIOMETRICS ,EVIDENCE gaps - Abstract
The importance of artificial intelligence in the banking industry is reflected in the speed at which financial institutions are adopting and implementing AI solutions to improve their services and adapt to new market demands. The aim of this research is to conduct a bibliometric analysis of the involvement of artificial intelligence in the banking sector to provide a comprehensive overview of the current state of research to guide future directions and support the sustainable development of this rapidly expanding field. Another important objective is to identify research gaps and underexplored areas in the field of artificial intelligence in banking. The methodology used is a bibliometric analysis using VOSviewer, analysing 1089 papers from the Web of Science database. The results of the study provide relevant information for banking professionals but also for policy makers. Thus, the study highlights key areas where banks are using artificial intelligence to gain competitive advantage, thereby guiding practitioners in strategic decision making. Moreover, by identifying emerging trends and patterns in AI adoption, the study helps banking practitioners with foresight, enabling them to anticipate and prepare for future developments in the field. In terms of governmental implications, the study can contribute to the development of more nuanced regulatory frameworks that effectively balance the promotion of AI innovation with the protection of ethical standards and consumer protection. [ABSTRACT FROM AUTHOR]
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- 2024
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17. Global Collaboration in Artificial Intelligence: Bibliometrics and Network Analysis from 1985 to 2019.
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Hu, Haotian, Wang, Dongbo, and Deng, Sanhong
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ARTIFICIAL intelligence ,HOTEL maintenance & repair ,SOCIAL network analysis ,BIBLIOMETRICS ,WEB databases ,DEVELOPED countries - Abstract
Purpose: This study aims to explore the trend and status of international collaboration in the field of artificial intelligence (AI) and to understand the hot topics, core groups, and major collaboration patterns in global AI research. Design/methodology/approach: We selected 38,224 papers in the field of AI from 1985 to 2019 in the core collection database of Web of Science (WoS) and studied international collaboration from the perspectives of authors, institutions, and countries through bibliometric analysis and social network analysis. Findings: The bibliometric results show that in the field of AI, the number of published papers is increasing every year, and 84.8% of them are cooperative papers. Collaboration with more than three authors, collaboration between two countries and collaboration within institutions are the three main levels of collaboration patterns. Through social network analysis, this study found that the US, the UK, France, and Spain led global collaboration research in the field of AI at the country level, while Vietnam, Saudi Arabia, and United Arab Emirates had a high degree of international participation. Collaboration at the institution level reflects obvious regional and economic characteristics. There are the Developing Countries Institution Collaboration Group led by Iran, China, and Vietnam, as well as the Developed Countries Institution Collaboration Group led by the US, Canada, the UK. Also, the Chinese Academy of Sciences (China) plays an important, pivotal role in connecting the these institutional collaboration groups. Research limitations: First, participant contributions in international collaboration may have varied, but in our research they are viewed equally when building collaboration networks. Second, although the edge weight in the collaboration network is considered, it is only used to help reduce the network and does not reflect the strength of collaboration. Practical implications: The findings fill the current shortage of research on international collaboration in AI. They will help inform scientists and policy makers about the future of AI research. Originality/value: This work is the longest to date regarding international collaboration in the field of AI. This research explores the evolution, future trends, and major collaboration patterns of international collaboration in the field of AI over the past 35 years. It also reveals the leading countries, core groups, and characteristics of collaboration in the field of AI. [ABSTRACT FROM AUTHOR]
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- 2020
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18. RESEARCH TRENDS IN INSURANCE RISK FROM 2000-2022: A BIBLIOMETRIC ANALYSIS OF THE LITERATURE.
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Wilaiporn Suwanmalai and Simon Zaby
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This paper aims to document and synthesize research trends in the domain of "insurance risk" over the past 20 years through bibliometric analysis (Hallinger, 2019) of 894 Scopus keyword-based reviews. Publications on insurance risk predominately originate from the United States (U.S.) and China. The most co-cited papers over the past 20 years were published in Insurance: Mathematics and Economics. The journal co-citation analysis (JCA) map identified three main journal fields: finance and risk management, mathematics and statistics, and actuarial science. The authors' co-citation map reveals the intellectual structure of the insurance risk knowledge base, resulting in three leading "schools of thought": risk management, mathematical and model, and actuarial science. Gerber, H. U. and Tang, Q. are the top scholars in their schools of thought. Recent efforts have focused on processes and technology, as gathering and analyzing a large volume of data requires artificial intelligence-based (AI-based) technologies to support efficient datadriven decisions (Tournas & Bowman, 2021). This helps in developing a robust and faster process for revenue and profit strategies. Considering the structure of the intellectual themes could be beneficial as part of insurance risk businesses and their strategic decisions for future achievements and further improvements. [ABSTRACT FROM AUTHOR]
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- 2024
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19. Artificial Intelligence and its Impact on Management Research: A Large-Scale Bibliometric Topic Mapping Analysis of the Interval 2020-2023.
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VIDU, Cristian
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ARTIFICIAL intelligence ,INTERVAL analysis ,BIBLIOMETRICS ,DIGITAL transformation ,DATABASES ,BUSINESS conferences - Abstract
The field of artificial intelligence is starting to permeate all aspects of society and management is no exception. From digital transformation, marketing and industry 4.0 to privacy and ethics, the significant growth of the number of papers being published each year makes it difficult to assess the state of research, the current topics that academia is focusing on and how these topics are evolving over the years. This paper aims to highlight the main topics of this complex and central theme and showcase the evolution of the field through a structured bibliometric analysis of all business-relevant articles and conference paper published in this interval. Leveraging the SCOPUS database, a number of 4763 papers have been identified and analysed, revealing a number of new insights into how the study of artificial intelligence is evolving. Although we are looking at a global perspective, in subsidiary we also observe and compare how Romania is faring against the other global players. [ABSTRACT FROM AUTHOR]
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- 2024
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20. Is the relationship between numbers of references and paper lengths the same for all sciences?
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Eugene Garfield and Helmut A. Abt
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Human-Computer Interaction ,Bibliometric analysis ,Artificial Intelligence ,Computer Networks and Communications ,Citation analysis ,Computer science ,Statistics ,Social science ,Citation ,Software ,Information Systems - Abstract
In each of 41 research journals in the physical, life, and social sciences there is a linear relationship between the average number of references and the normalized paper lengths. For most of the journals in a given field, the relationship is the same within statistical errors. For papers of average lengths in different sciences the average number of references is the same within ±17%. Because papers of average lengths in various sciences have the same number of references, we conclude that the citation counts to them can be intercompared within that accuracy. However, review journals are different: after scanning 18 review journals we found that those papers average twice the number of references as research papers of the same lengths.
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- 2002
21. Cybersecurity and Artificial Intelligence Applications: A Bibliometric Analysis Based on Scopus Database.
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Albahri, O. S. and AlAmoodi, A. H.
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ARTIFICIAL intelligence ,DATABASES ,BIBLIOMETRICS ,DIGITAL asset management ,INTERNET security ,COMPUTER network security ,DEEP learning - Abstract
The intersection of Cybersecurity and AI has garnered increasing attention in recent years due to the growing importance of securing digital assets in an interconnected world. This bibliometric analysis aims to provide valuable insights into the research trends and developments within this interdisciplinary domain. Using data extracted from the Scopus database, a total of 501 papers were selected and analyzed to uncover key patterns and themes. The methodology involved conducting a comprehensive literature search using specific keywords related to Cybersecurity and AI applications. The initial search yielded 736 papers, which were subsequently filtered to include research articles, conference papers, editorial papers, and review papers, resulting in the final dataset of 501 papers. The analysis of publication trends revealed a remarkable surge in research output since 2015, indicating the escalating interest in this field. Collaboration patterns among researchers and institutions were analyzed through co-authorship networks, highlighting a well-connected research community that fosters knowledge exchange. Keyword analysis exposed common areas of application, such as network security, deep learning, and the Internet of Things, underscoring the importance of AI technologies in enhancing Cybersecurity measures. Furthermore, examination of the most cited documents showcased influential contributions that have shaped the trajectory of Cybersecurity and AI research. The study emphasizes the significance of Cybersecurity and AI applications research, considering the ever-increasing reliance on technology in various aspects of modern life. By integrating AI technologies, Cybersecurity measures can be fortified with automated threat detection, adaptive defense mechanisms, and proactive risk mitigation, thereby bolstering overall cybersecurity resilience. The findings of this bibliometric analysis have several implications for researchers and policymakers. Researchers can leverage the identified trends and gaps to explore new research directions and potential collaborations. Policymakers can utilize these insights to make informed decisions regarding resource allocation for research initiatives aimed at addressing emerging Cybersecurity challenges. This bibliometric analysis provides a comprehensive overview of the evolving landscape of Cybersecurity and AI applications research. It underscores the growing importance of this interdisciplinary field and its potential to reshape the future of cybersecurity. As technology continues to advance, the integration of AI in Cybersecurity will play a pivotal role in safeguarding digital assets and ensuring the secure functioning of critical systems in an increasingly interconnected world. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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22. Artificial intelligence in business-to-business marketing: a bibliometric analysis of current research status, development and future directions
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Han, Runyue, Lam, Hugo K.S., Zhan, Yuanzhu, Wang, Yichuan, Dwivedi, Yogesh K., and Tan, Kim Hua
- Published
- 2021
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23. Global research trends of endoscope in early gastric cancer: A bibliometric and visualized analysis study over past 20 years .
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Sifan Liu, Nan Zhang, Yan Hao, and Peng Li
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BIBLIOMETRICS ,STOMACH cancer ,CONVOLUTIONAL neural networks ,ARTIFICIAL intelligence ,GASTRIC mucosa - Abstract
Objectives: Early gastric cancer (EGC) is defined as aggressive gastric cancer involving the gastric mucosa and submucosa. Early detection and treatment of gastric cancer are beneficial to patients. In recent years, many studies have focused on endoscopic diagnosis and therapy for EGC. Exploring new methods to analyze data to enhance knowledge is a worthwhile endeavor, especially when numerous studies exist. This study aims to investigate research trends in endoscopy for EGC over the past 20 years using bibliometric analysis. Methods: Original articles and reviews examining the use of endoscopy for EGC published from 2000 to 2022 were retrieved from the Web of Science Core Collection, and bibliometric data were extracted. Microsoft Office Excel 2016 was used to show the annual number of published papers for the top 10 countries and specific topics. VOSviewer software was used to generate network maps of the cooccurrences of keywords, authors, and topics to perform visualization network analysis. Results: In total, 1,009 published papers met the inclusion criteria. Japan was the most productive country and had the highest number of publications (452, 44.8%), followed by South Korea (183, 18.1%), and China (150, 14.9%). The National Cancer Center of Japan was the institution with the highest number of publications (48, 4.8%). Ono was the most active author and had the highest number of cited publications. Through the network maps, exploring endoscopic diagnosis and therapy were major topics. Artificial intelligence (AI), convolutional neural networks (CNNs), and deep learning are hotspots in endoscopic diagnosis. Helicobacter pylori eradication, second-look endoscopy, and follow-up management were examined. Conclusions: This bibliometric analysis investigated research trends regarding the use of endoscopy for treating EGC over the past 20 years. AI and deep learning, second-look endoscopy, and management are hotspots in endoscopic diagnosis and endoscopic therapy in the future. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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24. Digital Transformation Success Factors: A Systematic Literature Review and Bibliometric Analysis.
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Heuermann, Marie, Gaiser-Bertram, Sylvia, and Schallmo, Daniel
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DIGITAL transformation ,ARTIFICIAL intelligence ,TECHNOLOGICAL innovations ,DEEP learning ,DIGITAL technology - Abstract
Digital transformation has emerged as a critical strategy in today's dynamic business environment. However, the high failure rate of digital transformation initiatives underscores the need for a deeper understanding of success factors. This study conducts a comprehensive examination of digital transformation success factors through a systematic literature review. Assessing 34 peer-reviewed journal articles published between 2017 and 2023, the study evaluates research areas, temporal trends, geographical distributions, journals, significant keywords and main authors based on co-authorship, using bibliometric analysis. It unveils the current digital transformation research landscape, synthesises 119 enabling factors into 13 primary success factors and presents a new holistic digital transformation model. This model offers valuable guidance for organisations navigating transformation challenges, contributing significantly to both academic discourse and practitioners in this field. [ABSTRACT FROM AUTHOR]
- Published
- 2024
25. Special features of historical papers from the viewpoint of bibliometrics
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Werner Marx
- Subjects
Human-Computer Interaction ,Bibliometric analysis ,Information retrieval ,Artificial Intelligence ,Computer Networks and Communications ,Computer science ,Citation index ,Meaning (existential) ,Bibliometrics ,Citation ,GeneralLiterature_REFERENCE(e.g.,dictionaries,encyclopedias,glossaries) ,Software ,Information Systems - Abstract
This paper deals with the specific features of historical papers relevant for information retrieval and bibliometrics. The analysis is based mainly on the citation indexes accessible under the Web of Science (WoS) but also on field-specific databases: the Chemical Abstracts Service (CAS) literature database and the INSPEC database. First, the journal coverage of the WoS (in particular of the WoS Century of Science archive), the limitations of specific search fields as well as several database errors are discussed. Then, the problem of misspelled citations and their “mutations” is demonstrated by a few typical examples. Complex author names, complicated journal names, and other sources of errors that result from prior citation practice are further issues. Finally, some basic phenomena limiting the meaning of citation counts of historical papers are presented and explained. © 2011 Wiley Periodicals, Inc.
- Published
- 2011
26. How foresight has evolved since 1999? Understanding its themes, scope and focus.
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Dhiman, Vaishali and Arora, Manpreet
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CONSCIOUSNESS raising ,BIBLIOMETRICS ,CONCEPTUAL structures ,DIGITAL technology ,SOCIAL impact ,ELECTRONIC journals ,ARTIFICIAL intelligence - Abstract
Purpose: Foresight J's journey started in 1999, and in 2022, it marked the conclusion of its 24 years of publication. This paper aims to provide an overall overview of important research trends published in Foresight J between 1999 and 2022 by conducting a quantitative analysis of the journal's literature. The overarching goal is to provide valuable insights into the dynamics of scholarly communication, aiding researchers, institutions and policymakers in assessing the significance and influence of academic work, guiding future research directions and academic evaluation. Design/methodology/approach: The two bibliometrics methodologies that make up the methodology of this article are scientific mapping and performance analysis. Authors have explained the development and composition of the Foresight J using these methods. The SCOPUS database is being used in current research to analyse several dimensions, such as the evolution of publications by year, the most cited papers, core authors and researchers, leading countries and prolific institutions. Moreover, the conceptual structure, scope, burst detection and co-occurrence analysis of the journal are mapped using network visualization software such as VOSviewer, CiteSpace and RStudio. Findings: With a strong track record of output over the years, Foresight J has continued to develop in terms of publications. It is determined that "Saritas" is the author with the greatest overall impact. However, according to SCOPUS bibliometric data, "Blackman" and "Richardson" are the authors with the greatest relevance in terms of the quantity of articles. In addition, it becomes apparent that the USA, Australia and the UK are very productive nations in terms of publications. The most popular fields of the journal have always been forecasting, foresight, scenario planning, strategic planning, decision-making, technology and sustainable development. These are also the author keywords that appear the most frequently. In contrast, new study themes in the Foresight J include digital technologies, innovation, sustainability, blockchain, artificial intelligence and sustainability. Research limitations/implications: Several noteworthy research implications are provided by the bibliometric study of Foresight J. "Saritas" is the author with the most overall impact, indicating that the precise contributions and influence of this researcher in the fields of forecasting, foresight and related fields. Given that "Blackman" and "Richardson" are well-known writers, it is also critical to examine the scope and complexity of their contributions to potentially identify recurring themes or patterns in their writing. The geographic productivity results, which show that the USA, Australia and the UK are the top three countries for Foresight J publications, may encourage more research into regional differences, patterns of collaboration and the worldwide distribution of research endeavours in the context of forecasting and foresight. Popular fields including scenario planning, forecasting, foresight and sustainable development are consistent, indicating persistent research interests. Examining the causes of these subjects' ongoing relevance can reveal information about the consistency and development of scholarly interests over time. Practical implications: Foresight J's bibliometric analysis has real-world applications for many stakeholders. It helps editors and publishers make strategic decisions about outreach and content by providing insights regarding the journal's influence. Assessing organizational and author productivity helps institutions allocate resources more effectively. Policymakers acquire an instrument to evaluate research patterns and distribute funds efficiently. In general, bibliometric study of a journal helps decisionmakers in academic publishing make well-informed choices that maximize the potential of options for authors, editors, institutions and policymakers. Social implications: The societal ramifications of bibliometrically analysing Foresight J from 1999 and 2022 are substantial. This analysis highlights, over the past 24 years, research trends, technological developments and societal priorities have changed by methodically looking through the journal's articles. Gaining knowledge about the academic environment covered by the journal can help raise public awareness of important topics and promote critical thinking. In addition, the analysis can support evidence-based decision-making by alerting decision makers to the influential research that was published in Foresight J. This could have an impact on the course of policies pertaining to innovation, technology and societal development. Originality/value: This study presents a first comprehensive article that provides a general overview of the main trends and patterns of the research over the Foresight J's history since its inception. Also, the paper will help the scientific community to know the value and impact of Foresight J. [ABSTRACT FROM AUTHOR]
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- 2024
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27. A bibliometric study on recent trends in artificial intelligence-based suspicious activity recognition.
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Trabelsi, Zouheir and Parambil, Medha Mohan Ambali
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ARTIFICIAL intelligence ,BIBLIOMETRICS ,CITATION indexes ,RESEARCH personnel ,DATABASE searching ,BEHAVIORAL research - Abstract
Recent years have seen a dramatic increase in the use of artificial intelligence (AI) in suspicious activity recognition (SAR). To better understand the research work and recent trends in AI-based SAR, the paper carries out a bibliometric study to analyze the publications based on the recent developments and contributions of authors, publication source, country, and institutions, identifying the most productive items, and the partnership among each. The search on the Scopus database retrieved 1713 documents related to AI-based SAR. In this study, all document types from Scopus were included in the analysis. VOSviewer was used to perform coupling, cluster, and co-citation network analysis to identify research hotspots, while bibliometrix was used to generate keyword analysis, including word clouds, word dynamics, theme trends, and Sankey diagrams, to understand the evolution and future direction of the research field. This paper contributes valuable insights for researchers and audiences worldwide regarding emerging research areas. [ABSTRACT FROM AUTHOR]
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- 2024
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28. Artificial intelligence in personal development from cradle to grave: a comprehensive review of HRD literature.
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Laviola, Francescoa, Cucari, Nicola, and Novic, Harry
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LITERATURE reviews ,ARTIFICIAL intelligence ,MATURATION (Psychology) ,PERSONNEL management ,DATA modeling ,BIBLIOTHERAPY ,CONTEXTUAL analysis ,CHATBOTS - Abstract
Framing of the research. Artificial intelligence (AI) is transforming the way organisations manage human resources, injecting new capabilities into human resource management (HRM). There is a pressing need to examine new and more effective approaches to human resource development (HRD). Purpose of the paper. This paper aims to shed light on current knowledge of AI in the HRD domain, developing a comprehensive view of its role in the employee's journey. Methodology. Keyword co-occurrence analysis and bibliographic coupling analysis were performed on a total of 151 papers published between 2002 and 2022. A similarity visualisation programme (VOSviewer) was used to showcase the results visually. Results. The findings highlight the top five authors, sources, papers, and institutions in terms of the prolificacy of contributions in the field. The relevant contribution of this study is the identification and classification of the main topics and research streams in the academic literature. Five main bibliographic clusters are identified, unveiling the five most prominent topics in the field: i) AI in HR and contextual factors; ii) AI in education and future skills; iii) AI Coaching with chatbots; iv) AI in HR recruitment and training; v) AI in soft skills development. Research limitations. It should be acknowledged that the findings are rooted in one database, Scopus, and only publications in English were considered. Managerial implications. We offer three theoretical and institutional implications for advancing further research on AI in HRD. Furthermore, we outline six major takeaways and future lines of research stemming from our findings, resulting in a novel framework that can also be of practical interest to companies. Originality of the paper. This is the first bibliometric study in the HRD and AI field from the viewpoint of personal development. Thus, we provide a first systematisation of the contributions developed in the last twenty years in this novel field of research. [ABSTRACT FROM AUTHOR]
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- 2024
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29. Exploring the Evolution of Bibliometric Analysis: A Comprehensive Study of Scientific Publications from 1974 to 2024 Using the Dimensions AI Database.
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Hakkaraki, Vinayak P.
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BIBLIOMETRICS ,DATABASES ,DATA mapping ,ARTIFICIAL intelligence ,PREPRINTS - Abstract
Bibliometrics is the practice of analyzing books, articles, and other publications using statistical methods, with a particular focus on scientific contexts. This research employs bibliometric analysis to explore the evolution of the research landscape on bibliometrics and bibliometric analysis literature, utilizing the Dimensions AI database. A total of 23,527 articles were discovered in the Dimensions AI database when the search terms "bibliometric" and "bibliometric analysis" were input into the "Title" field. These articles cover a range of publication years from 1974 to 2024. Furthermore, upon selecting the "Health Science" category, 2,011 articles were displayed. Co-occurrence, co-authorship, countries, academic institutions, and future orientations are used to illustrate previous trends, growth, and prospects in the results, which are displayed through graphs, tables, and data maps. The results show that papers account for the majority of publications (1,888), with preprints coming in second (93). The most productive journal is Frontiers in Public Health, with 109 articles and 659 citations, while the most productive author is Waleed Mohamad Sweileh, with a substantial number of publications (n = 36) and total citations (1,428). The most productive academic institution is An-Najah National University, which tops the list with 63 publications and 2,082 citations. [ABSTRACT FROM AUTHOR]
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- 2024
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30. Mapping the Role and Impact of Artificial Intelligence and Machine Learning Applications in Supply Chain Digital Transformation: A Bibliometric Analysis.
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Rana, Jeetu and Daultani, Yash
- Abstract
Today, manufacturing enterprises are adopting emerging Industry 4.0 technologies to create industrial intelligence-driven smart factories. This trend, in turn, is stimulating the advent of intelligent supply chains that can sync and support the rapid evolution of advanced industrial practices via supply chain digital transformation. Specifically, Artificial Intelligence (AI) and Machine Learning (ML) are emerging as vital breakthrough technologies that can help firms enhance profit margins, reduce supply chain costs, deliver excellent customer service, and make their supply chains intelligent. This paper identifies and analyzes 338 most influential research papers to scientifically examine the linkages among the AI-ML techniques and their applications in the SCM domain through bibliometric and network analysis, descriptive data analysis, and visual representation, thus furnishing a perspicacious knowledge base. The main contribution of this paper is to identify the unexplored potential and the contexts in which AI and ML can be used in managing and transforming supply chains digitally, including the aspects of intelligent and interpretative evolutions. Additionally, a fundamental contribution of this work is a comprehensive mind map that makes it possible to visualize, understand, and simulate the wide spectrum of findings from the bibliometric analyses. Finally, the study presents research gaps, implications, and future scope as a point of reference for researchers and practitioners. [ABSTRACT FROM AUTHOR]
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- 2023
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31. A bibliometric analysis of the International Journal of Advances in Soft Computing and its Applications: Research influence and Contributions.
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Jaradat, Yousef, Alia, Mohammad, Masoud, Mohammad, Manasrah, Ahmad, Jebreil, Iqbal, Garaibeh, Alaa', and Al-Arasi, Sarah
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SOFT computing ,BIBLIOMETRICS ,ARTIFICIAL intelligence ,THEMATIC analysis ,SCHOLARLY publishing ,CLOUD computing - Abstract
The International Journal of Advances in Soft Computing and its Applications (IJASCA) is a rapidly growing academic journal published by Al-Zaythoonah University of Jordan (ZUJ). IJASCA publishes original contributions on soft computing, machine learning and artificial intelligence, cloud computing, big data and other current science and technological trends. This study uses different bibliometric analysis tools to analyze the IJASCA published research papers between 2009 and 2021. The analysis includes annual publication growth, citation patterns, most prolific authors, institutions and countries, co-citation and co-occurrence networks analysis. A total of 317 published papers have been studied. The results show that IJASCA has grown in research contributions from 12 papers in 2009 to 40 papers in 2021, and citations have grown drastically to 2253. Universiti Teknologi Malaysia, Johor, is the institution that contributed the most to IJASCA publications with 109 papers. Malaysia is the country that was cited the most with 794 citations. Thematic analysis shows that the most important author keywords are soft computing, optimization, machine learning, big data and cloud computing. Overall, the findings are beneficial to the IJASCA editorial board. Its retrospective review will most likely encourage journal readers and assist the editorial team in developing research strategies that will allow research scientists to contribute high-quality research papers to the IJASCA. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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32. Living in the Age of Deepfakes: A Bibliometric Exploration of Trends, Challenges, and Detection Approaches.
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Domenteanu, Adrian, Tătaru, George-Cristian, Crăciun, Liliana, Molănescu, Anca-Gabriela, Cotfas, Liviu-Adrian, and Delcea, Camelia
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DEEPFAKES ,ARTIFICIAL intelligence ,WEB analytics ,DATABASES ,MACHINE learning - Abstract
In an era where all information can be reached with one click and by using the internet, the risk has increased in a significant manner. Deepfakes are one of the main threats on the internet, and affect society by influencing and altering information, decisions, and actions. The rise of artificial intelligence (AI) has simplified the creation of deepfakes, allowing even novice users to generate false information in order to create propaganda. One of the most prevalent methods of falsification involves images, as they constitute the most impactful element with which a reader engages. The second most common method pertains to videos, which viewers often interact with. Two major events led to an increase in the number of deepfake images on the internet, namely the COVID-19 pandemic and the Russia–Ukraine conflict. Together with the ongoing "revolution" in AI, deepfake information has expanded at the fastest rate, impacting each of us. In order to reduce the risk of misinformation, users must be aware of the deepfake phenomenon they are exposed to. This also means encouraging users to more thoroughly consider the sources from which they obtain information, leading to a culture of caution regarding any new information they receive. The purpose of the analysis is to extract the most relevant articles related to the deepfake domain. Using specific keywords, a database was extracted from Clarivate Analytics' Web of Science Core Collection. Given the significant annual growth rate of 161.38% and the relatively brief period between 2018 and 2023, the research community demonstrated keen interest in the issue of deepfakes, positioning it as one of the most forward-looking subjects in technology. This analysis aims to identify key authors, examine collaborative efforts among them, explore the primary topics under scrutiny, and highlight major keywords, bigrams, or trigrams utilized. Additionally, this document outlines potential strategies to combat the proliferation of deepfakes in order to preserve information trust. [ABSTRACT FROM AUTHOR]
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- 2024
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33. Inteligência Artificial no campo de finanças.
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Magalhães Timotio, João Guilherme, Lima Vieira, Vânia Ereni, Alves de Oliveira, Ramon, and Faria e Silva, Roberto César
- Abstract
Copyright of GeSec: Revista de Gestao e Secretariado is the property of Sindicato das Secretarias e Secretarios do Estado de Sao Paulo (SINSESP) and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
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- 2024
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34. The Application of Artificial Intelligence Technology in Shipping: A Bibliometric Review.
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Xiao, Guangnian, Yang, Daoqi, Xu, Lang, Li, Jinpei, and Jiang, Ziran
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ARTIFICIAL intelligence ,MARITIME shipping ,EVIDENCE gaps ,DEEP learning ,RESEARCH vessels ,IMMUNOCOMPUTERS ,BIBLIOMETRICS - Abstract
Artificial intelligence (AI) technologies are increasingly being applied to the shipping industry to advance its development. In this study, 476 articles published in the Science Citation Index Expanded (SCI-EXPANDED) and the Social Sciences Citation Index (SSCI) of the Web of Science Core Collection from 2001 to 2022 were collected, and bibliometric methods were applied to conduct a systematic literature of the field of AI technology applications in the shipping industry. The review commences with an annual publication trend analysis, which shows that research in the field has been growing rapidly in recent years. This is followed by a statistical analysis of journals and a collaborative network analysis to identify the most productive journals, countries, institutions, and authors. The keyword "co-occurrence analysis" is then utilized to identify major research clusters, as well as hot research directions in the field, providing directions for future research in the field. Finally, based on the results of the keyword co-occurrence analysis and the content analysis of the papers published in recent years, the research gaps in AIS data applications, ship trajectory, and anomaly detection, as well as the possible future research directions, are discussed. The findings indicate that AIS data in the future research direction are mainly reflected in the analysis of ship behavior and AIS data repair. Ship trajectory in the future research direction is mainly reflected in the deep learning-based method research and the discussion of ship trajectory classification. Anomaly detection in the future research direction is mainly reflected in the application of deep learning technology in ship anomaly detection and improving the efficiency of ship anomaly detection. These insights offer guidance for researchers' future investigations in this area. In addition, we discuss the implications of research in the field of shipping AI from both theoretical and practical perspectives. Overall, this review can help researchers understand the status and development trend of the application field of AI technology in shipping, correctly grasp the research direction and methodology, and promote the further development of the field. [ABSTRACT FROM AUTHOR]
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- 2024
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35. Intellectual structure on artificial intelligence studies in tourism and hospitality: a bibliometric analysis.
- Author
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Şengel, Ümit and Işkın, Merve
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BIBLIOMETRICS ,ARTIFICIAL intelligence ,HOSPITALITY studies ,DATABASES ,CHATGPT ,HOSPITALITY industry personnel ,INTELLIGENT tutoring systems - Abstract
Purpose: The paper aims to reveal the intellectual structure of studies on artificial intelligence (AI) in the fields of tourism and hospitality. Evaluations regarding the intellectual structure have been made based on co-author, co-word and citation. Design/methodology/approach: The study is exploratory in nature. The study, using bibliometric analysis, provides a Web of Sciences (WOS) overview. The data has been obtained from the WOS database by coding as "artificial intelligence" and "tourism" and "hospitality." VOSviewer program has been used to obtain and analyze the data. Findings: The findings of the research show that studies on the use of AI in tourism and hospitality have become very popular, especially in the last 4 years. The authors of the study are working in the tourism and hospitality fields and have a high h-index. Generally, in current AI studies in tourism, topics such as robot, automation, ChatGPT, technology adoption and mechanical learning are studied. It has also been determined that topics related to the future of destinations and literature reviews are also discussed. Research limitations/implications: Although this paper examines all studies identified as a result of filtering, the analysis is limited to 195 studies. However, due to the widespread use of AI in tourism-related studies recently, bibliometric analysis has been made with extensive filtering. As studies on the subject become more widespread in the coming years, it would be useful to repeat similar studies by filtering with more specific quotas. Originality/value: There are a few similar studies on the subject in the field. However, these studies need to be repeated at certain periods. This paper contributes to monitoring the literature of AI studies, which are new to use in tourism and hospitality, and to the formation of a theoretical framework on the subject. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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36. A Bibliometric Analysis of Digital Twin in the Supply Chain.
- Author
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Lam, Weng Siew, Lam, Weng Hoe, and Lee, Pei Fun
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DIGITAL twins ,BIBLIOMETRICS ,DEEP learning ,SUPPLY chains ,INDUSTRY 4.0 ,ARTIFICIAL intelligence - Abstract
Digital twin is the digital representation of an entity, and it drives Industry 4.0. This paper presents a bibliometric analysis of digital twin in the supply chain to help researchers, industry practitioners, and academics to understand the trend, development, and focus of the areas of digital twin in the supply chain. This paper found several key clusters of research, including the designing of a digital twin model, integration of a digital twin model, application of digital twin in quality control, and digital twin in digitalization. In the embryonic stage of research, digital twin was tested in the production line with limited optimization. In the development stage, the importance of digital twin in Industry 4.0 was observed, as big data, machine learning, Industrial Internet of Things, blockchain, edge computing, and cloud-based systems complemented digital twin models. Digital twin was applied to improve sustainability in manufacturing and production logistics. In the current prosperity stage with high annual publications, the recent trends of this topic focus on the integration of deep learning, data models, and artificial intelligence for digitalization. This bibliometric analysis also found that the COVID-19 pandemic drove the start of the prosperity stage of digital twin research in the supply chain. Researchers in this field are slowly moving towards applying digital twin for human-centric systems and mass personalization to prepare to transit to Industry 5.0. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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37. Global Research on Big Data in Relation with Artificial Intelligence (A Bibliometric Study: 2008-2019).
- Author
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Kulakli, Atik and Osmanaj, Valmira
- Subjects
BIG data ,ARTIFICIAL intelligence ,SCIENTIFIC development ,SCHOLARS ,RESEARCH evaluation ,NONRELATIONAL databases - Abstract
The purpose of this paper is to analyze and explore the research studies on Big Data in relation with Artificial Intelligence domain, which published in Peer Review Journals and indexed in Web of Science Core Collection for the period of 2008-2019 years. The publication data for our research analysis "Big Data in relation with Artificial Intelligence" has been derived from the Web of Science (WoS) Core Collection database (Indexes included SCI Expanded and SSCI). The Bibliometric Analysis Methods is applied for the study in order to find out the relations between two domains and to investigate the status of scientific development level in the research era. Therefore, our research concentrates and highlights the current issues discussed and studied by the scholars around the globe. This paper would useful for researchers to show the publication trends on big data in relation with artificial intelligence research outcomes in highly reputable SCI-Exp and SSCI journal (ranked by WoS). [ABSTRACT FROM AUTHOR]
- Published
- 2020
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38. A bibliometric analysis by using VOSviewer for FinTech research.
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Chen, S. C.
- Subjects
FINANCIAL technology ,BIBLIOMETRICS ,ARTIFICIAL intelligence ,BLOCKCHAINS ,DISCOURSE analysis - Abstract
The field of Financial Technology, or "FinTech," emerged in 2008 and has since garnered notable attention from academics due to advancements in technology. This research analyzes 1,855 scholarly articles published between 2014 and 2023, with a focus on FinTech. We utilized the Scopus database to gather these articles and conducted a bibliometric analysis using VOSviewer software. Our analysis delves into publication patterns, global distribution, author affiliations, prolific authors, and keyword correlations within the research body. We identify significant interrelationships between FinTech and three prominent domains: Finance, Blockchain, and Artificial Intelligence. These fields have significantly influenced the development of FinTech discourse over the last decade. Our study presents significant findings on the current research status in FinTech, providing guidance and motivation for future research in this rapidly-evolving sector. Ultimately, our objective is to clarify the intricate relationship between FinTech and its related domains, offering insight for future research endeavors. [ABSTRACT FROM AUTHOR]
- Published
- 2024
39. Global trends of delayed graft function in kidney transplantation from 2013 to 2023: a bibliometric analysis.
- Author
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Zhiling Yao, Mingqian Kuang, and Zhen Li
- Subjects
BIBLIOMETRICS ,KIDNEY transplantation ,KIDNEY transplant complications ,BRAIN death ,ARTIFICIAL intelligence - Abstract
Delayed graft function (DGF) is an early complication after kidney transplantation. The literature on DGF has experienced substantial growth. However, there is a lack of bibliometric analysis of DGF. This study aimed to analyze the scientific outputs of DGF and explore its hotspots from 2013 to 2023 by using CiteSpace and VOSviewer. The 2058 pieces of literature collected in the Web of Science Core Collection (WOSCC) from 1 January 2013 to 31 December 2023 were visually analyzed in terms of the annual number of publications, authors, countries, journals, literature co-citations, and keyword clustering by using CiteSpace and VOSviewer. We found that the number of papers published in the past ten years showed a trend of first increasing and then decreasing; 2021 was the year with the most posts. The largest number of papers was published by the University of California System, and the largest number of papers was published by the United States. The top five keyword frequency rankings are: ‘delayed graft function’, ‘kidney transplantation’, ‘renal transplantation’, ‘survival’, and ‘recipients’. These emerging trends include ‘brain death donors’, ‘blood absence re-injection injuries’, ‘tacrolimus’, ‘older donors and recipients’, and ‘artificial intelligence and DGF’. In summary, this study reveals the authors and institutions that could be cooperated with and discusses the research hotspots in the past ten years. It provides a reference and direction for future research and application of DGF. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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40. Artificial Intelligence and Information Processing: A Systematic Literature Review.
- Author
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Lin, Keng-Yu and Chang, Kuei-Hu
- Subjects
DEEP learning ,INFORMATION processing ,ARTIFICIAL intelligence ,BIBLIOMETRICS ,SCIENTIFIC knowledge - Abstract
This study aims to understand the development trends and research structure of articles on artificial intelligence (AI) and information processing in the past 10 years. In particular, this study analyzed 13,294 papers published from 2012 to 2021 in the Web of Science, used the bibliometric analysis method to visualize the data of the papers, and drew a scientific knowledge map. By exploring the development of mainstream journals, author and country rankings, keyword evolution, and research field rankings in the past 10 years, this study uncovered key trends affecting AI progress and information processing that provide insights and serve as an important reference for future AI research and information processing. The results revealed a gradual increase in publications over the past decade, with explosive growth after 2020. The most prolific researchers in this field were Xu, Z.S.; Pedrycz, W.; Herrera-Viedma, E.; the major contributing countries were China, the USA, and Spain. In the AI and information processing research, keywords including "Deep learning", "Machine learning", and "Feature extraction" are components that play a crucial role. Additionally, the most representative research areas were "Engineering", "Operations Research and Management Science", and "Automation Control Systems". Overall, this study used bibliometric analysis to provide an overview of the latest trends in artificial intelligence and information processing. Although AI and information processing have been applied to various research areas, many other sub-topics can be further applied. Based on the findings, this study presented research insights and proposed suggestions for future research directions on AI and information processing. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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41. A Bibliometric Analysis of Fintech Trends: An Empirical Investigation.
- Author
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Garg, Girish, Shamshad, Mohd, Gauhar, Nikita, Tabash, Mosab I., Hamouri, Basem, and Daniel, Linda Nalini
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BIBLIOMETRICS ,HIGH technology industries ,TREND analysis ,EVIDENCE gaps ,FINANCIAL technology - Abstract
Financial technology, or Fintech, has captured the attention of scholars, students, and institutions across worldwide for over a decade. With a plethora of new financial services, products, and innovative methods to engage with clients, the impact of technology on the financial sector has been extensively studied. This research paper provides a summary of scientific research on FinTech by using bibliometric analysis. Using the Scopus database, the paper analyzed 665 publications and identified research gaps and new study topics through "VOS-Viewer" software and "Biblioshiny" using RStudio. The study focused on FinTech's functions and research constraints in digital finance by assessing citation links between the most significant articles. The findings provide a starting point for further investigation and offer opportunities for researchers to expand their expertise in exciting and innovative studies. Overall, this study seeks to help researchers discover new avenues for exploration in Fintech while advancing their present understanding. There exists much scope in the area of Digital Lending, Supply Chain Finance, the Internet of Things, and RoboAdvisers. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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- View/download PDF
42. A scoping review on multi-fault diagnosis of industrial rotating machines using multi-sensor data fusion.
- Author
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Gawde, Shreyas, Patil, Shruti, Kumar, Satish, and Kotecha, Ketan
- Subjects
MULTISENSOR data fusion ,DEEP learning ,INDUSTRY 4.0 ,LITERATURE reviews ,BIBLIOMETRICS ,FAULT diagnosis ,CITATION analysis - Abstract
Rotating machines is an essential part of any manufacturing industry. The sudden breakdown of such machines due to improper maintenance can also lead to the industries' shutdown. The era of the 4th industrial revolution is taking its major shape concerning maintenance strategies, notable being in predictive maintenance. Fault prediction and diagnosis is the major concern in predictive maintenance as this is the major issue faced by all the maintenance engineers. Most of the bibliometric literature review studies that are accessible focus on fault diagnosis in rotating machines, mainly focusing on a single type of fault. However, there isn't a thorough analysis of the literature that focuses on the "multi-fault diagnosis using multi-sensor data" aspect of rotating machines. In this regard, this paper reviews the literature on the "multi-Fault diagnosis using multi-sensor data fusion" of Industrial Rotating Machines employing Machine learning/Deep learning techniques. A hybrid bibliometric approach was used to analyze articles from the "Web of Science" and "Scopus" Database for the last 10 years. The method for literature analysis used, is quantitative as well as qualitative, as not only the traditional approach (bibliometric and network analysis) but also a novel method named ProKnow-C is used, and it entails a number of phases, that includes intelligent and extensive filtering from the large set of results and finally selecting the articles that are more pertinent to the research theme. Based on available publications, an analysis is performed on year-by-year publication data, article types, linguistic distribution of articles, funding sponsors, affiliations, citation analysis and the relationship between keywords, authors, etc. to provide an in-depth vision of research trends in the related area. The paper also focuses on the maintenance strategies, predictive maintenance approaches, AI algorithms, Multi sensor data fusion, challenges, and future directions in "multi-fault diagnosis using multi-sensor data fusion" in rotating machines. The foundational work done in the field, the most prolific papers and the key research themes within the research area are all identified in this bibliometric survey. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
43. A Bibliometric Analysis Deconstructing Research on how Cognitive Technologies Affect Man-Machine Collaboration.
- Author
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Tina Alexandra Ngo Schwabe Strand and Breunig, Karl Joachim
- Abstract
This paper addresses knowledge work challenges relating to emerging cognitive technologies. The field of research addressing artificial intelligence (AI), and related topics, is rapidly increasing. However, despite this emerging interest, the currently body of published research remains complex and unstructured. In particular, it remains to be understood how these technologies is implemented and cause changes in man-machine collaboration. To inform this issue, we conducted a bibliometric analysis of extant literature on AI and man-machine collaboration to take stock of extant published research in order to provide a foundation upon which both future theory and practice can be built. We based our analysis of an exhaustive structured literature search of published academic research in Web of Science (WoS) until 2020. Using the keywords digi* AND transform* OR artificial intelligence, 8 728 articles were identified. The bibliometric analysis enabled us first to identify 202 relevant articles published within the fields of business and management, and subsequently to further narrowing our scope to 25 core contributions using bibliometric coupling. A content analysis of these 25 articles revealed that whereas there is a lot of attention to the technological complexities related to the emerging cognitive technologies, there is to date limited empirical descriptions of the consequences for individuals, organizations or value creation of adopting these technologies. Our study identifies four important dimensions of man-machine collaboration; Knowledge worker, Organization, Market, and Society. Moreover, our findings reveal extant research is inconclusive with respect to the forces affecting these dimensions as different authors record both proactive forces and constraining forces associated with each of the four dimensions. Our contribution, as well as, the identification of a core canon of relevant research articles provides a foundation upon which future research and practice can be built by identifying core dimension and the forces acting upon them. [ABSTRACT FROM AUTHOR]
- Published
- 2023
44. Unleashing the Potential of Generative AI, Conversational Agents and Chatbots in Educational Praxis: A Systematic Review and Bibliometric Analysis of GenAI in Education.
- Author
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BOZKURT, ARAS
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GENERATIVE artificial intelligence ,PRAXIS (Process) ,CHATBOTS ,BIBLIOMETRICS ,ARTIFICIAL intelligence ,HEALTH literacy ,EMOTIONAL intelligence - Abstract
In the rapidly evolving landscape of education, the pivotal axis around which transformation revolves is human-AI interaction. In this sense, this paper adopts a data mining and analytic approach to understand what the related literature tells us regarding the trends and patterns of generative AI research in educational praxis. Accordingly, this systematic exploration spotlights the following research themes: Interaction and communication with generative AI-powered chatbots; impact of the LLMs and generative AI on teaching and learning, conversational educational agents and their opportunities, challenges, and implications; leveraging Generative AI for enhancing social and cognitive learning processes; promoting AI literacy for unleashing future opportunities; harnessing Generative AI to expand academic capabilities, and lastly, augmenting educational experiences through human-AI interaction. Beyond the identified research themes and patterns, this paper argues that emotional intelligence, AI literacy, and prompt engineering are the trending research topics that require further exploration. Accordingly, it's in this praxis that emotional intelligence emerges as a pivotal attribute, as AI technologies often struggle to comprehend and respond to the nuanced emotional cues. Generative AI literacy then takes center stage, becoming an indispensable asset in an era permeated with AI technologies, equipping students with the tools to critically engage with AI systems, thereby ensuring they become active, discerning users of these powerful tools. Concurrently, prompt engineering, the art of crafting queries that yield precise and valuable responses from AI systems, empowers both educators and students to maximize the utility of AI-driven educational resources. [ABSTRACT FROM AUTHOR]
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- 2023
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45. Bibliometric and visualized analysis of the application of artificial intelligence in stroke.
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Fangyuan Xu, Ziliang Dai, Yu Ye, Peijia Hu, and Hongliang Cheng
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BIBLIOMETRICS ,STROKE ,ARTIFICIAL intelligence ,MACHINE learning ,CITATION analysis - Abstract
Background: Stroke stands as a prominent cause of mortality and disability worldwide, posing a major public health concern. Recent years have witnessed rapid advancements in artificial intelligence (AI). Studies have explored the utilization of AI in imaging analysis, assistive rehabilitation, treatment, clinical decision-making, and outcome and risk prediction concerning stroke. However, there is still a lack of systematic bibliometric analysis to discern the current research status, hotspots, and possible future development trends of AI applications in stroke. Methods: The publications on the application of AI in stroke were retrieved from the Web of Science Core Collection, spanning 2004-2024. Only articles or reviews published in English were included in this study. Subsequently, a manual screening process was employed to eliminate literature not pertinent to the topic. Visualization diagrams for comprehensive and in-depth analysis of the included literature were generated using CiteSpace, VOSviewer, and Charticulator. Results: This bibliometric analysis included a total of 2,447 papers, and the annual publication volume shows a notable upward trajectory. The most prolific authors, countries, and institutions are Dukelow, Sean P., China, and the University of Calgary, respectively, making significant contributions to the advancement of this field. Notably, stable collaborative networks among authors and institutions have formed. Through clustering and citation burst analysis of keywords and references, the current research hotspots have been identified, including machine learning, deep learning, and AI applications in stroke rehabilitation and imaging for early diagnosis. Moreover, emerging research trends focus on machine learning as well as stroke outcomes and risk prediction. Conclusion: This study provides a comprehensive and in-depth analysis of the literature regarding AI in stroke, facilitating a rapid comprehension of the development status, cooperative networks, and research priorities within the field. Furthermore, our analysis may provide a certain reference and guidance for future research endeavors. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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46. Mapping the Frontier: A Bibliometric Analysis of Artificial Intelligence Applications in Local and Regional Studies.
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Delcea, Camelia, Nica, Ionuț, Ionescu, Ștefan, Cibu, Bianca, and Țibrea, Horațiu
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This study aims to provide a comprehensive bibliometric analysis covering the common areas between artificial intelligence (AI) applications and research focused on local or regional contexts. The analysis covers the period between the year 2002 and the year 2023, utilizing data sourced from the Web of Science database. Employing the Bibliometrix package within RStudio and VOSviewer software, the study identifies a significant increase in AI-related publications, with an annual growth rate of 22.67%. Notably, key journals such as Remote Sensing, PLOS ONE, and Sustainability rank among the top contributing sources. From the perspective of prominent contributing affiliations, institutions like Duy Tan University, Ton Duc Thang University, and the Chinese Academy of Sciences emerge as leading contributors, with Vietnam, Portugal, and China being the countries with the highest citation counts. Furthermore, a word cloud analysis is able to highlight the recurring keywords, including "model", "classification", "prediction", "logistic regression", "innovation", "performance", "random forest", "impact", "machine learning", "artificial intelligence", and "deep learning". The co-occurrence network analysis reveals five clusters, amongst them being "artificial neural network", "regional development", "climate change", "regional economy", "management", "technology", "risk", and "fuzzy inference system". Our findings support the fact that AI is increasingly employed to address complex regional challenges, such as resource management and urban planning. AI applications, including machine learning algorithms and neural networks, have become essential for optimizing processes and decision-making at the local level. The study concludes with the fact that while AI holds vast potential for transforming local and regional research, ongoing international collaboration and the development of adaptable AI models are essential for maximizing the benefits of these technologies. Such efforts will ensure the effective implementation of AI in diverse contexts, thereby supporting sustainable regional development. [ABSTRACT FROM AUTHOR]
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- 2024
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47. Enhancing Resilience via Exponential Technologies: Analysing Trends, Focus and Contributions.
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Arora, Manpreet, Kumar, Jeetesh, Dhiman, Vaishali, Rathore, Sunaina, Singh, Swati, and Chandel, Monika
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ARTIFICIAL intelligence ,BIBLIOMETRICS ,BIG data ,CLOUD computing ,BLOCKCHAINS - Abstract
This article seeks to conduct a bibliometric analysis focusing on exponential technologies such as big data, internet of thing (IoT), artificial intelligence (AI), blockchain and cloud computing. It aims to outline research trends in this domain and explore their correlation with resilience. The study aims to track the evolution of research trends in this field over time and identify less explored dimensions of exponential technologies. Leveraging performance analysis and science mapping techniques, the paper highlights the significant growth and potential in these areas, considering them as pivotal agendas of the twenty-first century. By examining scientific productivity metrics such as publications, authors, institutions, countries and keywords, the article offers insights into emerging areas within exponential technologies. As the first comprehensive study of its kind, it provides a broad overview of the main trends and patterns in resilience research encompassing big data, IoT, AI, blockchain and cloud computing, consolidating them into a single cohesive narrative. [ABSTRACT FROM AUTHOR]
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- 2024
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48. Global research trends and foci of artificial intelligence-based tumor pathology: a scientometric study.
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Shen, Zefeng, Hu, Jintao, Wu, Haiyang, Chen, Zeshi, Wu, Weixia, Lin, Junyi, Xu, Zixin, Kong, Jianqiu, and Lin, Tianxin
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MASS media ,BIBLIOMETRICS ,ARTIFICIAL intelligence ,COGNITION ,RESEARCH funding ,BREAST tumors - Abstract
Background: With the development of digital pathology and the renewal of deep learning algorithm, artificial intelligence (AI) is widely applied in tumor pathology. Previous researches have demonstrated that AI-based tumor pathology may help to solve the challenges faced by traditional pathology. This technology has attracted the attention of scholars in many fields and a large amount of articles have been published. This study mainly summarizes the knowledge structure of AI-based tumor pathology through bibliometric analysis, and discusses the potential research trends and foci.Methods: Publications related to AI-based tumor pathology from 1999 to 2021 were selected from Web of Science Core Collection. VOSviewer and Citespace were mainly used to perform and visualize co-authorship, co-citation, and co-occurrence analysis of countries, institutions, authors, references and keywords in this field.Results: A total of 2753 papers were included. The papers on AI-based tumor pathology research had been continuously increased since 1999. The United States made the largest contribution in this field, in terms of publications (1138, 41.34%), H-index (85) and total citations (35,539 times). We identified the most productive institution and author were Harvard Medical School and Madabhushi Anant, while Jemal Ahmedin was the most co-cited author. Scientific Reports was the most prominent journal and after analysis, Lecture Notes in Computer Science was the journal with highest total link strength. According to the result of references and keywords analysis, "breast cancer histopathology" "convolutional neural network" and "histopathological image" were identified as the major future research foci.Conclusions: AI-based tumor pathology is in the stage of vigorous development and has a bright prospect. International transboundary cooperation among countries and institutions should be strengthened in the future. It is foreseeable that more research foci will be lied in the interpretability of deep learning-based model and the development of multi-modal fusion model. [ABSTRACT FROM AUTHOR]- Published
- 2022
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49. Global development of artificial intelligence in cancer field: a bibliometric analysis range from 1983 to 2022.
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Sui-Han Wang, Guoqiao Chen, Xin Zhong, Tianyu Lin, Yan Shen, Xiaoxiao Fan, and Liping Cao
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ARTIFICIAL intelligence ,BIBLIOMETRICS ,ELECTRONIC data processing ,WEB databases ,DATABASE searching - Abstract
Background: Artificial intelligence (AI) is widely applied in cancer field nowadays. The aim of this study is to explore the hotspots and trends of AI in cancer research. Methods: The retrieval term includes four topic words ("tumor," "cancer," "carcinoma," and "artificial intelligence"), which were searched in the database of Web of Science from January 1983 to December 2022. Then, we documented and processed all data, including the country, continent, Journal Impact Factor, and so on using the bibliometric software. Results: A total of 6,920 papers were collected and analyzed. We presented the annual publications and citations, most productive countries/regions, most influential scholars, the collaborations of journals and institutions, and research focus and hotspots in AI-based cancer research. Conclusion: This study systematically summarizes the current research overview of AI in cancer research so as to lay the foundation for future research. [ABSTRACT FROM AUTHOR]
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- 2023
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50. Review of Land Use Change Detection—A Method Combining Machine Learning and Bibliometric Analysis.
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Liu, Bo, Song, Wei, Meng, Zhan, and Liu, Xinwei
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MACHINE learning ,LAND use ,ARTIFICIAL intelligence ,DEEP learning ,BIBLIOMETRICS ,BIODIVERSITY conservation - Abstract
Land use change detection (LUCD) is a critical technology with applications in various fields, including forest disturbance, cropland changes, and urban expansion. However, the current review articles on LUCD tend to be limited in scope, rendering a comprehensive review challenging due to the vast number of publications. This paper systematically reviewed 3512 articles retrieved from the Web of Science Core database between 1985 and 2022, utilizing a combination of bibliometric analysis and machine learning methods with LUCD as the main focus. The results indicated an exponential increase in the number of LUCD studies, indicating continued growth in this research field. Commonly used methods include classification-based, threshold-based, model-based, and deep learning-based change detection, with research themes encompassing forest logging and vegetation succession, urban landscape dynamics, and biodiversity conservation and management. To build an intelligent change detection system, researchers need to develop a flexible framework that integrates data preprocessing, feature extraction, land use type interpretation, and accuracy evaluation, given the continuous evolution and application of remote sensing data, deep learning, big data, and artificial intelligence. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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