17,095 results
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2. ElmNet: a benchmark dataset for generating headlines from Persian papers
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Shenassa, Mohammad E. and Minaei-Bidgoli, Behrouz
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- 2022
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3. An Overview of Machine Learning in Orthopedic Surgery: An Educational Paper.
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Padash, Sirwa, Mickley, John P., Vera Garcia, Diana V., Nugen, Fred, Khosravi, Bardia, Erickson, Bradley J., Wyles, Cody C., and Taunton, Michael J.
- Abstract
The growth of artificial intelligence combined with the collection and storage of large amounts of data in the electronic medical record collection has created an opportunity for orthopedic research and translation into the clinical environment. Machine learning (ML) is a type of artificial intelligence tool well suited for processing the large amount of available data. Specific areas of ML frequently used by orthopedic surgeons performing total joint arthroplasty include tabular data analysis (spreadsheets), medical imaging processing, and natural language processing (extracting concepts from text). Previous studies have discussed models able to identify fractures in radiographs, identify implant type in radiographs, and determine the stage of osteoarthritis based on walking analysis. Despite the growing popularity of ML, there are limitations including its reliance on "good" data, potential for overfitting, long life cycle for creation, and ability to only perform one narrow task. This educational article will further discuss a general overview of ML, discussing these challenges and including examples of successfully published models. [Display omitted] [ABSTRACT FROM AUTHOR]
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- 2023
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4. Increased Accuracy on Image Classification of Game Rock Paper Scissors using CNN
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Muhammad Nur Ichsan, Nur Armita, Agus Eko Minarno, Fauzi Dwi Setiawan Sumadi, and Hariyady
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cnn ,deep learning ,image classification ,machine learning ,neural network ,Systems engineering ,TA168 ,Information technology ,T58.5-58.64 - Abstract
Rock Paper Scissors is one of the most popular games in the world, because of their easy and simple way to play among young and elderly people. The point of this game is to do the draw or just to find out who loses or wins. The pandemic conditions made people unable to meet face-to-face and could only play this game virtually. To carry out this activity in a virtual way, this research facilitates a model in the form of image classification to distinguish the hand gestures s in the form of rock, paper, and scissors. This classification process utilizes the Convolutional Neural Network (CNN) method. This method is one type of artificial neural network in terms of image classification. CNN uses three stages, namely convolutional layer, pooling layer, and fully connected layer. The implementation of this method for hand gesture classification in the form of rock, scissors, and paper images in this study shows an increased average accuracy towards the previous study from 97.66% to 99%.
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- 2022
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5. COVID-19 disease diagnosis from paper-based ECG trace image data using a novel convolutional neural network model
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Irmak, Emrah
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- 2022
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6. A Graph-Based Topic Modeling Approach to Detection of Irrelevant Citations.
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Pham, Phu, Le, Hieu, Tam, Nguyen Thanh, and Tran, Quang-Dieu
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NATURAL language processing ,DEEP learning ,MACHINE learning ,INFORMATION retrieval - Abstract
In the recent years, the academic paper influence analysis has been widely studied due to its potential applications in the multiple areas of science information metric and retrieval. By identifying the academic influence of papers, authors, etc., we can directly support researchers to easily reach academic papers. These recommended candidate papers are not only highly relevant with their desired research topics but also highly-attended by the research community within these topics. For very recent years, the rapid developments of academic networks, like Google Scholar, Research Gate, CiteSeerX, etc., have significantly boosted the number of new published papers annually. It also helps to strengthen the borderless cooperation between researchers who are interested on the same research topics. However, these current academic networks still lack the capabilities of provisioning researchers deeper into most-influenced papers. They also largely ignore quite/irrelevant papers, which are not fully related with their current interest topics. Moreover, the distributions of topics within these academic papers are considered as varying and it is difficult to extract the main concentrated topics in these papers. Thus, it leads to challenges for researchers to find their appropriated/high-qualified reference resources while doing researches. To overcome this limitation, in this paper, we proposed a novel approach of paper influence analysis through their content-based and citation relationship-based analyses within the biographical network. In order to effectively extract the topic-based relevance from papers, we apply the integrated graph-based citation relationship analysis with topic modeling approach to automatically learn the distributions of keyword-based labeled topics in forms of unsupervised learning approach, named as TopCite. Then, we base on the constructed graph-based paper–topic structure to identify their relevancy levels. Upon the identified relevancy levels between papers, we can support for improving the accuracy performance of other bibliographic network mining tasks, such as paper similarity measurement, recommendation, etc. Extensive experiments in real-world AMiner bibliographic dataset demonstrate the effectiveness of our proposed ideas in this paper. [ABSTRACT FROM AUTHOR]
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- 2023
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7. Deep Learning for 3D Reconstruction, Augmentation, and Registration: A Review Paper.
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Vinodkumar, Prasoon Kumar, Karabulut, Dogus, Avots, Egils, Ozcinar, Cagri, and Anbarjafari, Gholamreza
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DEEP learning , *COMPUTER vision , *GRAPH neural networks , *ARTIFICIAL intelligence , *MACHINE learning , *GENERATIVE adversarial networks - Abstract
The research groups in computer vision, graphics, and machine learning have dedicated a substantial amount of attention to the areas of 3D object reconstruction, augmentation, and registration. Deep learning is the predominant method used in artificial intelligence for addressing computer vision challenges. However, deep learning on three-dimensional data presents distinct obstacles and is now in its nascent phase. There have been significant advancements in deep learning specifically for three-dimensional data, offering a range of ways to address these issues. This study offers a comprehensive examination of the latest advancements in deep learning methodologies. We examine many benchmark models for the tasks of 3D object registration, augmentation, and reconstruction. We thoroughly analyse their architectures, advantages, and constraints. In summary, this report provides a comprehensive overview of recent advancements in three-dimensional deep learning and highlights unresolved research areas that will need to be addressed in the future. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Special issue on intelligent systems: ISMIS 2022 selected papers.
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Ceci, Michelangelo, Flesca, Sergio, Manco, Giuseppe, and Masciari, Elio
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MACHINE learning ,ARTIFICIAL intelligence ,DECISION support systems ,KNOWLEDGE representation (Information theory) ,COMPUTER vision ,DEEP learning - Abstract
This document is a special issue of the Journal of Intelligent Information Systems, focusing on the selected papers from the International Symposium on Methodologies for Intelligent Systems (ISMIS 2022). The symposium, held in Cosenza, Italy, showcased research on various topics related to artificial intelligence, including decision support, knowledge representation, machine learning, computer vision, and more. The special issue includes eleven papers that have undergone rigorous peer-reviewing and cover a wide range of research topics, such as deep learning, anomaly detection, malware detection, sentiment classification, and healthcare professionals' burnout. The authors express their gratitude to the contributors and reviewers for their valuable contributions. [Extracted from the article]
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- 2024
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9. Citation recommendation using modified HITS algorithm.
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Kammari, Monachary and Bhavani, S. Durga
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DEEP learning ,ALGORITHMS ,COMPUTER performance ,WEBSITES ,MACHINE learning - Abstract
Over the years the number of research publications per year is growing exponentially. Finding research papers of quality from the massive literature of relevant articles is a challenging and time-consuming task. The approaches in the latest literature address citation recommendation by utilizing large bibliographic information and use machine learning and deep learning methods for the task. These techniques clearly require a large amount of training data as well as machines with high processing power. To overcome these issues, we propose a novel method by modifying the popular hyperlink induced topic search (HITS), a web page ranking algorithm, as citation recommendation using hyperlink induced topic search (CR-HITS) that works on a directed and weighted heterogeneous bibliographic network containing diverse types of nodes and edges. We define effective scoring schemes for nodes and edges based on basic bibliographic information like citations of papers, number of publications of an author, etc. Given a few seed papers, the citation recommendation algorithm CR-HITS is run on small neighborhoods of the seed papers and hence the time taken by the execution is very small to yield the final recommendations. To the best of our knowledge, HITS has been used for the first time for the citation recommendation problem. We perform extensive experimentation on DBLP (version-11) and ACM (version-9) datasets and compare the results with many baseline methods in terms of MAP, MRR, and recall@N measures. The performance of the proposed algorithms is superior with respect to the MAP metric and matches the second best for the other two metrics. Since the top two algorithms use deep learning methods and use much larger bibliographic information including abstracts of the papers, we claim that our approach utilizes very low resources, yet yields recommendations that are very close to the top recommendations. [ABSTRACT FROM AUTHOR]
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- 2024
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10. Prediction of the minimum fluidization velocity of different biomass types by artificial neural networks and empirical correlations
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Matos, Thenysson, Perazzini, Maisa Tonon Bitti, and Perazzini, Hugo
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- 2024
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11. An update on computational pathology tools for genitourinary pathology practice: A review paper from the Genitourinary Pathology Society (GUPS).
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Parwani, Anil V., Patel, Ankush, Ming Zhou, Cheville, John C., Tizhoosh, Hamid, Humphrey, Peter, Reuter, Victor E., and True, Lawrence D.
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DEEP learning , *ITERATIVE learning control , *PATHOLOGY , *IMAGE analysis , *MACHINE learning - Abstract
Machine learning has been leveraged for image analysis applications throughout a multitude of subspecialties. This position paper provides a perspective on the evolutionary trajectory of practical deep learning tools for genitourinary pathology through evaluating the most recent iterations of such algorithmic devices. Deep learning tools for genitourinary pathology demonstrate potential to enhance prognostic and predictive capacity for tumor assessment including grading, staging, and subtype identification, yet limitations in data availability, regulation, and standardization have stymied their implementation. [ABSTRACT FROM AUTHOR]
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- 2023
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12. Research Trends in Artificial Intelligence and Security—Bibliometric Analysis.
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Ilić, Luka, Šijan, Aleksandar, Predić, Bratislav, Viduka, Dejan, and Karabašević, Darjan
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DEEP learning ,BIBLIOMETRICS ,ARTIFICIAL intelligence ,WEB analytics ,MACHINE learning ,PUBLIC health infrastructure - Abstract
This paper provides a bibliometric analysis of current research trends in the field of artificial intelligence (AI), focusing on key topics such as deep learning, machine learning, and security in AI. Through the lens of bibliometric analysis, we explore publications published from 2020 to 2024, using primary data from the Clarivate Analytics Web of Science Core Collection. The analysis includes the distribution of studies by year, the number of studies and citation rankings in journals, and the identification of leading countries, institutions, and authors in the field of AI research. Additionally, we investigate the distribution of studies by Web of Science categories, authors, affiliations, publication years, countries/regions, publishers, research areas, and citations per year. Key findings indicate a continued growth of interest in topics such as deep learning, machine learning, and security in AI over the past few years. We also identify leading countries and institutions active in researching this area. Awareness of data security is essential for the responsible application of AI technologies. Robust security frameworks are important to mitigate risks associated with AI integration into critical infrastructure such as healthcare and finance. Ensuring the integrity and confidentiality of data managed by AI systems is not only a technical challenge but also a societal necessity, demanding interdisciplinary collaboration and policy development. This analysis provides a deeper understanding of the current state of research in the field of AI and identifies key areas for further research and innovation. Furthermore, these findings may be valuable to practitioners and decision-makers seeking to understand current trends and innovations in AI to enhance their business processes and practices. [ABSTRACT FROM AUTHOR]
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- 2024
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13. Artificial intelligence and deep learning: considerations for financial institutions for compliance with the regulatory burden in the United Kingdom
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Singh, Charanjit
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- 2024
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14. Comment on papers using machine learning for significant wave height time series prediction: Complex models do not outperform auto-regression.
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Jiang, Haoyu, Zhang, Yuan, Qian, Chengcheng, and Wang, Xuan
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ARTIFICIAL neural networks , *TIME series analysis , *PREDICTION models , *ARTIFICIAL intelligence , *MACHINE learning , *DECOMPOSITION method - Abstract
• Five Machine Learning (ML) models compared for wave height time series prediction. • Complex ML models do not outperform simple AR in wave height time series prediction. • Comment to related papers: signal decomposition in test set series is WRONG. Significant Wave Height (SWH) is crucial in many aspect of ocean engineering. The accurate prediction of SWH has therefore been of immense practical value. Recently, Artificial Intelligence (AI) time series prediction methods have been widely used for single-point short-term SWH time-series forecasting, resulting in many AI-based models claiming to achieve good results. However, the extent to which these complex AI models can outperform traditional methods has largely been overlooked. This study compared five different models - AutoRegressive (AR), eXtreme Gradient Boosting (XGB), Artificial Neural Network (ANN), Long Short-Term Memory (LSTM), and WaveNet - for their performance on SWH time series prediction at 16 buoy locations. Surprisingly, the results suggest that the differences of performance among different models are negligible, indicating that all these AI models have only "learned" the linear auto-regression from the data. Additionally, we noticed that many recent studies used signal decomposition method for such time series prediction, and most of them decomposed the test sets, which is WRONG. [ABSTRACT FROM AUTHOR]
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- 2024
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15. MLCAD: A Survey of Research in Machine Learning for CAD Keynote Paper.
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Rapp, Martin, Amrouch, Hussam, Lin, Yibo, Yu, Bei, Pan, David Z., Wolf, Marilyn, and Henkel, Jorg
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MACHINE learning , *CIRCUIT complexity , *COMPUTER-aided design , *ARTIFICIAL neural networks , *INTEGRATED circuits , *CONFIGURATION space , *MULTICASTING (Computer networks) - Abstract
Due to the increasing size of integrated circuits (ICs), their design and optimization phases (i.e., computer-aided design, CAD) grow increasingly complex. At design time, a large design space needs to be explored to find an implementation that fulfills all specifications and then optimizes metrics like energy, area, delay, reliability, etc. At run time, a large configuration space needs to be searched to find the best set of parameters (e.g., voltage/frequency) to further optimize the system. Both spaces are infeasible for exhaustive search typically leading to heuristic optimization algorithms that find some tradeoff between design quality and computational overhead. Machine learning (ML) can build powerful models that have successfully been employed in related domains. In this survey, we categorize how ML may be used and is used for design-time and run-time optimization and exploration strategies of ICs. A metastudy of published techniques unveils areas in CAD that are well explored and underexplored with ML, as well as trends in the employed ML algorithms. We present a comprehensive categorization and summary of the state of the art on ML for CAD. Finally, we summarize the remaining challenges and promising open research directions. [ABSTRACT FROM AUTHOR]
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- 2022
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16. A systematic literature review on recent trends of machine learning applications in additive manufacturing.
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Xames, Md Doulotuzzaman, Torsha, Fariha Kabir, and Sarwar, Ferdous
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MACHINE learning ,INDUSTRY 4.0 ,MANUFACTURING processes ,CONFERENCE papers ,PERIODICAL articles - Abstract
Additive manufacturing (AM) offers the advantage of producing complex parts more efficiently and in a lesser production cycle time as compared to conventional subtractive manufacturing processes. It also provides higher flexibility for diverse applications by facilitating the use of a variety of materials and different processing technologies. With the exceptional growth of computing capability, researchers are extensively using machine learning (ML) techniques to control the performance of every phase of AM processes, such as design, process parameters modeling, process monitoring and control, quality inspection, and validation. Also, ML methods have made it possible to develop cybermanufacturing for AM systems and thus revolutionized Industry 4.0. This paper presents the state-of-the-art applications of ML in solving numerous problems related to AM processes. We give an overview of the research trends in this domain through a systematic literature review of relevant journal articles and conference papers. We summarize recent development and existing challenges to point out the direction of future research scope. This paper can provide AM researchers and practitioners with the latest information consequential for further development. [ABSTRACT FROM AUTHOR]
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- 2023
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17. Introduction to the virtual collection of papers on Artificial neural networks: applications in X‐ray photon science and crystallography.
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Ekeberg, Tomas
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ARTIFICIAL neural networks , *DEEP learning , *CRYSTALLOGRAPHY , *ARTIFICIAL intelligence , *MACHINE learning , *PHOTONS - Abstract
Artificial intelligence is more present than ever, both in our society in general and in science. At the center of this development has been the concept of deep learning, the use of artificial neural networks that are many layers deep and can often reproduce human‐like behavior much better than other machine‐learning techniques. The articles in this collection are some recent examples of its application for X‐ray photon science and crystallography that have been published in Journal of Applied Crystallography. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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18. Machine learning methods for prediction of cancer driver genes: a survey paper.
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Andrades, Renan and Recamonde-Mendoza, Mariana
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CANCER genes , *SOMATIC mutation , *DEEP learning , *GENETIC mutation , *MACHINE learning , *THERAPEUTICS , *DIAGNOSIS , *SCIENTIFIC community - Abstract
Identifying the genes and mutations that drive the emergence of tumors is a critical step to improving our understanding of cancer and identifying new directions for disease diagnosis and treatment. Despite the large volume of genomics data, the precise detection of driver mutations and their carrying genes, known as cancer driver genes, from the millions of possible somatic mutations remains a challenge. Computational methods play an increasingly important role in discovering genomic patterns associated with cancer drivers and developing predictive models to identify these elements. Machine learning (ML), including deep learning, has been the engine behind many of these efforts and provides excellent opportunities for tackling remaining gaps in the field. Thus, this survey aims to perform a comprehensive analysis of ML-based computational approaches to identify cancer driver mutations and genes, providing an integrated, panoramic view of the broad data and algorithmic landscape within this scientific problem. We discuss how the interactions among data types and ML algorithms have been explored in previous solutions and outline current analytical limitations that deserve further attention from the scientific community. We hope that by helping readers become more familiar with significant developments in the field brought by ML, we may inspire new researchers to address open problems and advance our knowledge towards cancer driver discovery. [ABSTRACT FROM AUTHOR]
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- 2022
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19. A physics-driven and machine learning-based digital twinning approach to transient thermal systems
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Di Meglio, Armando, Massarotti, Nicola, and Nithiarasu, Perumal
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- 2024
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20. A Meta-Survey on Intelligent Energy-Efficient Buildings.
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Islam, Md Babul, Guerrieri, Antonio, Gravina, Raffaele, and Fortino, Giancarlo
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MACHINE learning ,REINFORCEMENT learning ,SMART cities ,DEEP learning ,INDUSTRIAL ecology ,INTELLIGENT buildings - Abstract
The rise of the Internet of Things (IoT) has enabled the development of smart cities, intelligent buildings, and advanced industrial ecosystems. When the IoT is matched with machine learning (ML), the advantages of the resulting enhanced environments can span, for example, from energy optimization to security improvement and comfort enhancement. Together, IoT and ML technologies are widely used in smart buildings, in particular, to reduce energy consumption and create Intelligent Energy-Efficient Buildings (IEEBs). In IEEBs, ML models are typically used to analyze and predict various factors such as temperature, humidity, light, occupancy, and human behavior with the aim of optimizing building systems. In the literature, many review papers have been presented so far in the field of IEEBs. Such papers mostly focus on specific subfields of ML or on a limited number of papers. This paper presents a systematic meta-survey, i.e., a review of review articles, that compares the state of the art in the field of IEEBs using the Prisma approach. In more detail, our meta-survey aims to give a broader view, with respect to the already published surveys, of the state-of-the-art in the IEEB field, investigating the use of supervised, unsupervised, semi-supervised, and self-supervised models in a variety of IEEB-based scenarios. Moreover, our paper aims to compare the already published surveys by answering five important research questions about IEEB definitions, architectures, methods/models used, datasets and real implementations utilized, and main challenges/research directions defined. This meta-survey provides insights that are useful both for newcomers to the field and for researchers who want to learn more about the methodologies and technologies used for IEEBs' design and implementation. [ABSTRACT FROM AUTHOR]
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- 2024
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21. Visible detection of chilled beef freshness using a paper-based colourimetric sensor array combining with deep learning algorithms.
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Lin, Yuandong, Ma, Ji, Cheng, Jun-Hu, and Sun, Da-Wen
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MACHINE learning , *DEEP learning , *SENSOR arrays , *PATTERN recognition systems , *MULTIVARIATE analysis , *FEATURE extraction - Abstract
• Qualitative and quantitative detection of amine gases could be achieved by CSA. • A visible detection of beef freshness using the amine-responsive CSA was proposed. • ResNet34 had the best performance for beef freshness detection based on CSA. • T-SNE could further visualize and understand the classification process of DL. This study developed an innovative approach that combines a colourimetric sensor array (CSA) composed of twelve pH-response dyes with advanced algorithms, aiming to detect amine gases and assess the freshness of chilled beef. With the assistance of multivariate statistical analysis, the sensor array can effectively distinguish five amine gases and enable rapid quantification of trimethylamine vapour with a limit of detection (LOD) of 8.02 ppb and visually monitor the fresh levels of chilled beef. Moreover, the utilization of deep learning models (ResNet34, VGG16, and GoogleNet) for chilled beef freshness evaluation achieved an overall accuracy of 98.0 %. Furthermore, t -distributed stochastic neighbour embedding (t -SNE) visualized the feature extraction process and provided explanations to understand the classification process of deep learning. The results demonstrated that applying deep learning techniques in the process of pattern recognition of CSA can help in realizing the rapid, robust, and accurate assessment of chilled beef freshness. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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22. Anomaly network intrusion detection system based on NetFlow using machine/deep learning.
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Adli, Touati B., Amokrane, Salem-Bilal B., Pavlović, Boban Z., Laidouni, Mohammad Zouaoui M., and Benyahia, Taki-eddine Ahmed A.
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DEEP learning ,MACHINE learning ,CONFERENCE papers ,MACHINING ,BIG data ,MACHINERY - Abstract
Copyright of Military Technical Courier / Vojnotehnicki Glasnik is the property of Military Technical Courier / Vojnotehnicki Glasnik 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.)
- Published
- 2023
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23. Smart Contract Vulnerability Detection Based on Deep Learning and Multimodal Decision Fusion.
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Deng, Weichu, Wei, Huanchun, Huang, Teng, Cao, Cong, Peng, Yun, and Hu, Xuan
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DEEP learning ,BLOCKCHAINS ,ELECTRONIC paper ,SMART structures ,MACHINE learning ,SOURCE code - Abstract
With the rapid development and widespread application of blockchain technology in recent years, smart contracts running on blockchains often face security vulnerability problems, resulting in significant economic losses. Unlike traditional programs, smart contracts cannot be modified once deployed, and vulnerabilities cannot be remedied. Therefore, the vulnerability detection of smart contracts has become a research focus. Most existing vulnerability detection methods are based on rules defined by experts, which are inefficient and have poor scalability. Although there have been studies using machine learning methods to extract contract features for vulnerability detection, the features considered are singular, and it is impossible to fully utilize smart contract information. In order to overcome the limitations of existing methods, this paper proposes a smart contract vulnerability detection method based on deep learning and multimodal decision fusion. This method also considers the code semantics and control structure information of smart contracts. It integrates the source code, operation code, and control-flow modes through the multimodal decision fusion method. The deep learning method extracts five features used to represent contracts and achieves high accuracy and recall rates. The experimental results show that the detection accuracy of our method for arithmetic vulnerability, re-entrant vulnerability, transaction order dependence, and Ethernet locking vulnerability can reach 91.6%, 90.9%, 94.8%, and 89.5%, respectively, and the detected AUC values can reach 0.834, 0.852, 0.886, and 0.825, respectively. This shows that our method has a good vulnerability detection effect. Furthermore, ablation experiments show that the multimodal decision fusion method contributes significantly to the fusion of different modalities. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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24. IDENTIFICATION OF SOFTWARE QUALITY ATTRIBUTES FROM CODE DEFECT PREDICTION: A SYSTEMATIC LITERATURE REVIEW.
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RUMBUTIS, Lukas, SLOTKIENĖ, Asta, and PLIUSKUVIENĖ, Birutė
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COMPUTER software quality control ,LITERATURE reviews ,ARTIFICIAL intelligence ,MACHINE learning ,COMPUTER software development ,DEEP learning - Abstract
Identifying and understanding reasons for deriving software development defects is crucial for ensuring software product quality attributes such as maintainability. This paper presents a systematic literature review and the objective is to analyze the suggestions of other authors regarding software code defect prediction using machine learning, deep learning, or other artificial intelligence methods for the identification of software quality. The systemic literature review reveals that many analyzed papers considered multiple software code defects, but they were analyzed individually. However, more is needed to identify software quality attributes. The more profound analysis of code smells indicates the significance when considering multiple detected code smells and their interconnectedness; it helps to identify the software quality sub-attributes of maintainability. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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25. A bibliometric and social network analysis of data-driven heuristic methods for logistics problems.
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Deniz, Nurcan and Ozceylan, Eren
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SOCIAL network analysis ,HEURISTIC ,BIBLIOMETRICS ,MATERIALS handling ,DEEP learning ,MACHINE learning ,FREIGHT forwarders - Abstract
Transport and logistics systems include a range of activities that deal with all sorts of decisions and operations from material handling to vehicle routing. One of the main challenges for transport and logistics processes is to deal with large-scale and complex problems. However, with increasingly diverse sets of operational real-world data becoming available, data-driven heuristic approaches are promising to pave the path for solving the problems in the field of transport and logistics. Thus, a comprehensive review is needed to observe the reflections of this path in literature. To bridge this gap, a total of 40 papers on the topic of 'data-driven heuristic approaches to logistics and transportation problems' are determined. Before the categorization and content analysis; descriptive, bibliometric and social network analysis are carried out to identify the current state of the literature. All the papers are systemically reviewed based on different perspectives, namely data-driven methodology, heuristics, sub-problems and etc. Based on the review, suggestions for future research are likewise provided. Subsequently, machine learning and deep learning methods are considered to be among the most promising data-driven methodologies. The review may be useful for academicians, researchers, and practitioners for a better understanding of data-driven heuristic approaches to transportation and logistics problems. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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26. Comprehensive Review: Machine and Deep Learning in Brain Stroke Diagnosis.
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Fernandes, João N. D., Cardoso, Vitor E. M., Comesaña-Campos, Alberto, and Pinheira, Alberto
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DEEP learning ,STROKE ,MACHINE learning ,ELECTRONIC data processing ,DIAGNOSIS ,PATIENT monitoring - Abstract
Brain stroke, or a cerebrovascular accident, is a devastating medical condition that disrupts the blood supply to the brain, depriving it of oxygen and nutrients. Each year, according to the World Health Organization, 15 million people worldwide experience a stroke. This results in approximately 5 million deaths and another 5 million individuals suffering permanent disabilities. The complex interplay of various risk factors highlights the urgent need for sophisticated analytical methods to more accurately predict stroke risks and manage their outcomes. Machine learning and deep learning technologies offer promising solutions by analyzing extensive datasets including patient demographics, health records, and lifestyle choices to uncover patterns and predictors not easily discernible by humans. These technologies enable advanced data processing, analysis, and fusion techniques for a comprehensive health assessment. We conducted a comprehensive review of 25 review papers published between 2020 and 2024 on machine learning and deep learning applications in brain stroke diagnosis, focusing on classification, segmentation, and object detection. Furthermore, all these reviews explore the performance evaluation and validation of advanced sensor systems in these areas, enhancing predictive health monitoring and personalized care recommendations. Moreover, we also provide a collection of the most relevant datasets used in brain stroke analysis. The selection of the papers was conducted according to PRISMA guidelines. Furthermore, this review critically examines each domain, identifies current challenges, and proposes future research directions, emphasizing the potential of AI methods in transforming health monitoring and patient care. [ABSTRACT FROM AUTHOR]
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- 2024
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27. Main Path Analysis to Filter Unbiased Literature.
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Umair, Muhammad, Majeed, Fiaz, Shoaib, Muhammad, Saleem, Muhammad Qaiser, Adrees, Mohmmed S., Karrar, Abdelrahman Elsharif, Khurram, Shahzada, Shafiq, Muhammad, and Jin-Ghoo Choi
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PATH analysis (Statistics) ,DEEP learning ,CITATION analysis ,MACHINE learning ,DATA mining ,REMOTE sensing - Abstract
Citations are references used by researchers to recognize the contributions of researchers in their articles. Citations can be used to discover hidden patterns in the research domain, and can also be used to perform various analyses in data mining. Citation analysis is a quantitative method to identify knowledge dissemination and influence papers in any research area. Citation analysis involves multiple techniques. One of the most commonly used techniques is Main Path Analysis (MPA). According to the specific use of MPA, it has evolved into various variants. Currently, MPA is carried out in different domains, but deep learning in the field of remote sensing has not yet been considered. In this paper, we have used three centrality attributes which are Degree, Betweenness and Closeness centrality to automatically identify important papers by applying clustering method based on machine learning (i.e., K-means). In addition, the main path is drawn from important papers and compared with existing manual methods. In order to conduct experiments, a data set from Web of Science (WOS) has been established, which contains 538 papers in the field of deep learning. Compared with existing works, our method provides the most relevant papers on the main path. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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28. Feature Mining and Sensitivity Analysis with Adaptive Sparse Attention for Bearing Fault Diagnosis.
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Jiang, Qinglei, Bao, Binbin, Hou, Xiuqun, Huang, Anzheng, Jiang, Jiajie, and Mao, Zhiwei
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FAULT diagnosis ,SENSITIVITY analysis ,RECOMMENDER systems ,FEATURE selection ,FILTER paper ,MACHINE learning - Abstract
Bearing fault diagnosis for equipment-safe operation has a crucial role. In recent years, more achievements have been made in bearing fault diagnosis. However, for the fault diagnosis model, the representation and sensitivity of bearing fault features have a great influence on the diagnosis output results; thus, the attention mechanism is particularly important for the selection of features. However, global attention focuses on all sequences, which is computationally expensive and not ideal for fault diagnosis tasks. The local attention mechanism ignores the relationship between non-adjacent sequences. To address the respective shortcomings of global attention and local attention, an adaptive sparse attention network is proposed in this paper to filter fault-sensitive information by soft threshold filtering. In addition, the effects of different signal representation domains on fault diagnosis results are investigated to filter out signal representation forms with better performance. Finally, the proposed adaptive sparse attention network is applied to cross-working conditions diagnosis of bearings. The adaptive sparse attention mechanism focuses on the signal characteristics of different frequency bands for different fault types. The proposed network model achieves better overall performance when comparing the cross-conditions diagnosis accuracy and model convergence speed. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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29. Foreword to special issue: Papers from the 64th Annual Meeting of the APS Division of Plasma Physics, October 17–21, 2022.
- Author
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Krushelnick, Karl and Mauel, Michael
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PLASMA physics , *ANNUAL meetings , *LOW temperature physics , *DEEP learning , *INERTIAL confinement fusion , *LASER plasmas , *PLASMA astrophysics , *MACHINE learning - Abstract
The tutorials also covered the field of plasma physics and introduced some new topics and technologies to plasma physicists that connect to our research. The presentations included four invited review talks, 98 invited talks, four tutorials, and four presentations from this year's prize and award recipients. The 64th Annual Meeting of the APS Division of Plasma Physics (DPP) was held October 17-21, 2022 in Spokane, Washington at the Spokane Convention Center. [Extracted from the article]
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- 2023
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30. Voice separation and recognition using machine learning and deep learning a review paper.
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ibrahemm, Zaineb h. and Shihab, Ammar I.
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ARTIFICIAL neural networks ,AUTOMATIC speech recognition ,DEEP learning ,MACHINE learning ,SPEECH perception ,SPEECH - Abstract
Voice isolation, a prominent research area in the field of speech processing, has garnered a great deal of attention due to its prospective implications in numerous domains. Deep neural networks (DNNs) have emerged as a potent instrument for addressing the challenges associated with vocal isolation. This paper presents a comprehensive study on the use of DNNs for voice isolation, focusing on speech recognition and speaker identification tasks. The proposed method uses frequency domain and time domain techniques to improve the separation of target utterances from background noise. The experimental results demonstrate the efficacy of the proposed method, revealing substantial improvements in voice isolation precision and robustness. This study's findings contribute to the increasing corpus of research on voice isolation techniques and provide valuable insights into the application of DNNs to improve speech processing tasks . [ABSTRACT FROM AUTHOR]
- Published
- 2023
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- View/download PDF
31. Parameter optimization for surface mounter using a self-alignment prediction model
- Author
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Mistry, Maitri, Gupta, Rahul, Jain, Swati, Verma, Jaiprakash V., and Won, Daehan
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- 2023
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32. An artificial intelligent manufacturing process for high-quality low-cost production
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Hassan, Noha M., Hamdan, Ameera, Shahin, Farah, Abdelmaksoud, Rowaida, and Bitar, Thurya
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- 2023
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33. Predicting sentiment and rating of tourist reviews using machine learning
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Puh, Karlo and Bagić Babac, Marina
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- 2023
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34. When artificial intelligence meets the hospitality and tourism industry: an assessment framework to inform theory and management
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Huang, Arthur, Chao, Ying, de la Mora Velasco, Efrén, Bilgihan, Anil, and Wei, Wei
- Published
- 2022
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35. INTRODUCTION TO THE SPECIAL ISSUE ON NEXT GENERATION PERVASIVE RECONFIGURABLE COMPUTING FOR HIGH PERFORMANCE REAL TIME APPLICATIONS.
- Author
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VENKATESAN, C., YU-DONG ZHANG, CHOW CHEE ONN, and AND YONG SHI
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MACHINE learning ,REINFORCEMENT learning ,HIGH performance computing ,COMPUTER vision ,ARTIFICIAL intelligence ,PARSING (Computer grammar) ,DEEP learning - Abstract
This document introduces a special issue of the journal "Scalable Computing: Practice & Experience" focused on next-generation pervasive reconfigurable computing for high-performance real-time applications. The authors discuss the importance of adaptable platforms for real-time tasks and highlight the benefits of reconfigurable computing in accelerating applications like image processing and machine learning. The special issue aims to explore recent advancements in this field and includes research papers on topics such as network security, malware detection, software reliability prediction, and optimization algorithms for wing design. The papers cover a range of computer science and technology topics, showcasing advancements and their potential impact on various computing domains. [Extracted from the article]
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- 2024
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36. Machine Learning and Graph Signal Processing Applied to Healthcare: A Review.
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Calazans, Maria Alice Andrade, Ferreira, Felipe A. B. S., Santos, Fernando A. N., Madeiro, Francisco, and Lima, Juliano B.
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PATTERN recognition systems ,SIGNAL processing ,DEEP learning ,GRAPH theory ,SIGNALS & signaling - Abstract
Signal processing is a very useful field of study in the interpretation of signals in many everyday applications. In the case of applications with time-varying signals, one possibility is to consider them as graphs, so graph theory arises, which extends classical methods to the non-Euclidean domain. In addition, machine learning techniques have been widely used in pattern recognition activities in a wide variety of tasks, including health sciences. The objective of this work is to identify and analyze the papers in the literature that address the use of machine learning applied to graph signal processing in health sciences. A search was performed in four databases (Science Direct, IEEE Xplore, ACM, and MDPI), using search strings to identify papers that are in the scope of this review. Finally, 45 papers were included in the analysis, the first being published in 2015, which indicates an emerging area. Among the gaps found, we can mention the need for better clinical interpretability of the results obtained in the papers, that is not to restrict the results or conclusions simply to performance metrics. In addition, a possible research direction is the use of new transforms. It is also important to make new public datasets available that can be used to train the models. [ABSTRACT FROM AUTHOR]
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- 2024
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37. Comment on Martínez-Delgado et al. Using Absorption Models for Insulin and Carbohydrates and Deep Leaning to Improve Glucose Level Predictions. Sensors 2021, 21 , 5273.
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Misplon, Josiah Z. R., Saini, Varun, Sloves, Brianna P., Meerts, Sarah H., and Musicant, David R.
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INSULIN ,CARBOHYDRATES ,TYPE 1 diabetes ,GLUCOSE ,MACHINE learning ,ABSORPTION - Abstract
The paper "Using Absorption Models for Insulin and Carbohydrates and Deep Leaning to Improve Glucose Level Predictions" (Sensors 2021, 21, 5273) proposes a novel approach to predicting blood glucose levels for people with type 1 diabetes mellitus (T1DM). By building exponential models from raw carbohydrate and insulin data to simulate the absorption in the body, the authors reported a reduction in their model's root-mean-square error (RMSE) from 15.5 mg/dL (raw) to 9.2 mg/dL (exponential) when predicting blood glucose levels one hour into the future. In this comment, we demonstrate that the experimental techniques used in that paper are flawed, which invalidates its results and conclusions. Specifically, after reviewing the authors' code, we found that the model validation scheme was malformed, namely, the training and test data from the same time intervals were mixed. This means that the reported RMSE numbers in the referenced paper did not accurately measure the predictive capabilities of the approaches that were presented. We repaired the measurement technique by appropriately isolating the training and test data, and we discovered that their models actually performed dramatically worse than was reported in the paper. In fact, the models presented in the that paper do not appear to perform any better than a naive model that predicts future glucose levels to be the same as the current ones. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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38. Machine-Learning Based Solution for Enhancing the Performance of Undergraduate Research Projects.
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Thiwanka, W. K. C., M. P., Subasinghe, D. M. M. A., Dissanayake, W. A. M. B., Wijewardane, Chathuranga, H. M. Samadhi, and Tissera, Wishalya
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MACHINE learning ,DEEP learning ,TECHNOLOGICAL innovations ,AUGMENTED reality ,COLLEGE students - Abstract
Research projects are a critical point of a student's life as they help to generate new knowledge and understanding in a particular field. University students struggle immensely when completing their research projects due to lack of knowledge about the research process. In order to assist students in this process, "LEARNBOOST" progressive web application provides dashboards with valuable and meaningful insights about the research projects, research areas, research groups, publications and competitions. These dashboards will help the students to get a clear understanding about the past research projects in a more effective manner. In addition, the system provides a research area prediction system that predicts the students research area of interest when they provide the research topic. These predictions are generated using Natural Language Processing (NLP) Transformers so that the students' students research topics will be identified more accurately. Moreover, "LEARNBOOST" student performance enhancement system provides a recommendation system that identifies student research area of interests through text inputs and suggest leading research papers where students can contribute to the further development of new ideas, technologies, and innovations. And through an abstract summarization, students can easily get the abstract summarized into few sentences. We present the results of a pilot study in which the proposed system was used to support a group of students and demonstrate its effectiveness in improving student performance. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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39. 72‐4: Invited Paper: Synthetic Defect Generation for Display Front‐of‐Screen Quality Inspection: A Survey.
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Mou, Shancong, Cao, Meng, Hong, Zhendong, Huang, Ping, Shan, Jiulong, and Shi, Jianjun
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MASS production ,MACHINE learning ,DEEP learning ,MANUFACTURING processes ,EVALUATION methodology - Abstract
Display front‐of‐screen (FOS) quality inspection is essential for the mass production of displays in the manufacturing process. However, the severe imbalanced data, especially the limited number of defective samples, has been a long‐standing problem that hinders the successful application of deep learning algorithms. Synthetic defect data generation can help address this issue. This paper reviews the state‐of‐the‐art synthetic data generation methods and the evaluation metrics that can potentially be applied to display FOS quality inspection tasks. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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40. Deep Learning Based on Fine Tuning with Application to the Reliability Assessment of Similar Open Source Software.
- Author
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Tamura, Yoshinobu and Yamada, Shigeru
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OPEN source software ,DEEP learning ,COMPUTER software development ,MACHINE learning ,COMPUTER software industry ,STATISTICAL learning - Abstract
Recently, many open-source products have been used under the situations of general software development, because the cost saving and standardization. Therefore, many open-source products are gathering attention from many software development companies. Then, the reliability/quality of open-source products becomes very important factor for the software development. This paper focuses on the reliability/quality evaluation of open-source products. In particular, the large quantity fault data sets recorded on Bugzilla of open-source products is used in many open-source development projects. Then, the large amount of data sets of software faults is recorded on the Bugzilla. This paper proposes the reliability/quality evaluation approach based on the deep machine learning by using the large quantity fault data on the Bugzilla. Moreover, the large quantity fault data sets are analyzed by the deep machine learning based on the fine-tuning. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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41. A machine learning framework for enhancing digital experiences in cultural heritage
- Author
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Belhi, Abdelhak, Bouras, Abdelaziz, Al-Ali, Abdulaziz Khalid, and Foufou, Sebti
- Published
- 2023
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42. Forecasting office rents with ensemble models – the case for European real estate markets
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von Ahlefeldt-Dehn, Benedict, Cajias, Marcelo, and Schäfers, Wolfgang
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- 2023
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43. Deep learning-assisted ultra-accurate smartphone testing of paper-based colorimetric ELISA assays.
- Author
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Duan, Sixuan, Cai, Tianyu, Zhu, Jia, Yang, Xi, Lim, Eng Gee, Huang, Kaizhu, Hoettges, Kai, Zhang, Quan, Fu, Hao, Guo, Qiang, Liu, Xinyu, Yang, Zuming, and Song, Pengfei
- Subjects
- *
DEEP learning , *MACHINE learning , *SMARTPHONES , *ENZYME-linked immunosorbent assay , *MEDICAL screening , *MOBILE apps - Abstract
Smartphone has long been considered as one excellent platform for disease screening and diagnosis, especially when combined with microfluidic paper-based analytical devices (μPADs) that feature low cost, ease of use, and pump-free operations. In this paper, we report a deep learning-assisted smartphone platform for ultra-accurate testing of paper-based microfluidic colorimetric enzyme-linked immunosorbent assay (c-ELISA). Different from existing smartphone-based μPAD platforms, whose sensing reliability is suffered from uncontrolled ambient lighting conditions, our platform is able to eliminate those random lighting influences for enhanced sensing accuracy. We first constructed a dataset that contains c-ELISA results (n = 2048) of rabbit IgG as the model target on μPADs under eight controlled lighting conditions. Those images are then used to train four different mainstream deep learning algorithms. By training with these images, the deep learning algorithms can well eliminate the influences of lighting conditions. Among them, the GoogLeNet algorithm gives the highest accuracy (>97%) in quantitative rabbit IgG concentration classification/prediction, which also provides 4% higher area under curve (AUC) value than that of the traditional curve fitting results analysis method. In addition, we fully automate the whole sensing process and achieve the "image in, answer out" to maximize the convenience of the smartphone. A simple and user-friendly smartphone application has been developed that controls the whole process. This newly developed platform further enhances the sensing performance of μPADs for use by laypersons in low-resource areas and can be facilely adapted to the real disease protein biomarkers detection by c-ELISA on μPADs. [Display omitted] • This deep learning-assisted smartphone platform is unaffected by ambient lighting. • A fully automated "image in, answer out" operation fashion. • A 2048 custom image dataset is used to test 4 mainstream deep learning algorithms. • GoogLeNet provides >97% accuracy in quantitative rabbit IgG testing. • The area under the curve (AUC) is 4% higher than that of conventional methods. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
44. Social relation and physical lane aggregator: integrating social and physical features for multimodal motion prediction
- Author
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Chen, Qiyuan, Wei, Zebing, Wang, Xiao, Li, Lingxi, and Lv, Yisheng
- Published
- 2022
- Full Text
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45. Artificial intelligence research in agriculture: a review
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Sood, Amit, Sharma, Rajendra Kumar, and Bhardwaj, Amit Kumar
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- 2022
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46. Exploring the effectiveness of word embedding based deep learning model for improving email classification
- Author
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Asudani, Deepak Suresh, Nagwani, Naresh Kumar, and Singh, Pradeep
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- 2022
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- View/download PDF
47. Research on case preprocessing based on deep learning.
- Author
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Zhang, Chuyue, Cai, Manchun, Zhao, Xiaofan, and Wang, Dawei
- Subjects
DEEP learning ,MACHINE learning ,DATA mining ,CONFERENCE papers ,DATA quality - Abstract
Considering the problem of missing fields in the criminal case system, this article proposes a deep learning algorithm to extract the features of the case description and fill in the missing value. Due to Chinese expressions and characteristics of criminal cases, we make both character vectors and word vectors to present text embedding. Character vectors are from bert model. Word vector is trained by long short‐term memory model with attention. The experiment uses 13,890 data totally. This work is an extension of our short conference proceeding paper. The results show that the combination of characters and words can effectively improve the accuracy of the conference paper by 9%. This is the first time to cascade the character and word dimensions on the criminal case information preprocess and it can provide higher quality data especially for the crime data mining. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
48. Network-aware credit scoring system for telecom subscribers using machine learning and network analysis
- Author
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Gao, Hongming, Liu, Hongwei, Ma, Haiying, Ye, Cunjun, and Zhan, Mingjun
- Published
- 2022
- Full Text
- View/download PDF
49. Combining Machine Learning and Semantic Web: A Systematic Mapping Study.
- Author
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BREIT, ANNA, WALTERSDORFER, LAURA, EKAPUTRA, FAJAR J., SABOU, MARTA, EKELHART, ANDREAS, IANA, ANDREEA, PAULHEIM, HEIKO, PORTISCH, JAN, REVENKO, ARTEM, TEIJE, ANNETTE TEN, and VAN HARMELEN, FRANK
- Subjects
ARTIFICIAL intelligence ,MACHINE learning ,SEMANTIC Web ,KNOWLEDGE graphs ,DEEP learning ,KNOWLEDGE representation (Information theory) - Abstract
In line with the general trend in artificial intelligence research to create intelligent systems that combine learning and symbolic components, a new sub-area has emerged that focuses on combining Machine Learning components with techniques developed by the SemanticWeb community--SemanticWebMachine Learning (SWeML). Due to its rapid growth and impact on several communities in thepast two decades, there is a need to better understand the space of these SWeML Systems, their characteristics, and trends. Yet, surveys that adopt principled and unbiased approaches are missing. To fill this gap, we performed a systematic study and analyzed nearly 500 papers published in the past decade in this area, where we focused on evaluating architectural and application-specific features. Our analysis identified a rapidly growing interest in SWeML Systems, with a high impact on several application domains and tasks. Catalysts for this rapid growth are the increased application of deep learning and knowledge graph technologies. By leveraging the in-depth understanding of this area acquired through this study, a further key contribution of this article is a classification system for SWeML Systems that we publish as ontology. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
50. Cyberbullying detection from tweets using deep learning
- Author
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Bharti, Shubham, Yadav, Arun Kumar, Kumar, Mohit, and Yadav, Divakar
- Published
- 2022
- Full Text
- View/download PDF
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