23,102 results
Search Results
2. Cover papers of top journals are reliable source for emerging topics detection: a machine learning based prediction framework.
- Author
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Wei, Wenjie, Liu, Hongxu, and Sun, Zhuanlan
- Abstract
The detection of emerging trends is of great interest to many stakeholders such as government and industry. Previous research focused on the machine learning, network analysis and time series analysis based on the bibliometrics data and made a promising progress. However, these approaches inevitably have time delay problems. For the reason that leader papers of "emerging topics" share the similar characters with the "cover papers", this study present a novel approach to translate the "emerging topics" detection to "cover paper" prediction. By using "AdaBoost model" and topic model, we construct a machine learning framework to imitate the top journal (chief) editor's judgement to select cover paper from material science. The results of our prediction were validated by consulting with field experts. This approach was also suitable for the Nature, Science, and Cell journals. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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3. Special Issue of Natural Logic Meets Machine Learning (NALOMA): Selected Papers from the First Three Workshops of NALOMA.
- Author
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Kalouli, Aikaterini-Lida, Abzianidze, Lasha, and Chatzikyriakidis, Stergios
- Subjects
DEEP learning ,MACHINE learning ,QUESTION answering systems ,LANGUAGE models ,NATURAL language processing ,ARTIFICIAL neural networks ,MACHINE translating - Abstract
The text discusses the intersection of natural language understanding (NLU) and reasoning in the context of large language models (LLMs) and traditional logic-based approaches. It highlights the strengths and weaknesses of both approaches and explores the potential for hybrid models that combine symbolic and distributional representations. The text also mentions specific applications of hybrid approaches in natural language inference, question-answering, sentiment analysis, and dialog. The document concludes by introducing a special issue that features selected contributions from the NALOMA workshop series, which focuses on hybrid methods in NLU. [Extracted from the article]
- Published
- 2024
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4. Attribute-based quality classification of academic papers.
- Author
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Nakatoh, Tetsuya, Hirokawa, Sachio, Minami, Toshiro, Nanri, Takeshi, and Funamori, Miho
- Abstract
Investigating the relevant literature is very important for research activities. However, it is difficult to select the most appropriate and important academic papers from the enormous number of papers published annually. Researchers search paper databases by combining keywords, and then select papers to read using some evaluation measure—often, citation count. However, the citation count of recently published papers tends to be very small because citation count measures accumulated importance. This paper focuses on the possibility of classifying high-quality papers superficially using attributes such as publication year, publisher, and words in the abstract. To examine this idea, we construct classifiers by applying machine-learning algorithms and evaluate these classifiers using cross-validation. The results show that our approach effectively finds high-quality papers. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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5. Text-based paper-level classification procedure for non-traditional sciences using a machine learning approach.
- Author
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Moctezuma, Daniela, López-Vázquez, Carlos, Lopes, Lucas, Trevisan, Norton, and Pérez, José
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MACHINE learning ,COMPUTER science ,INFORMATION science ,CLASSIFICATION ,CARTOGRAPHY - Abstract
Science as a whole is organized into broad fields, and as a consequence, research, resources, students, etc., are also classified, assigned, or invited following a similar structure. Some fields have been established for centuries, and some others are just flourishing. Funding, staff, etc., to support fields are offered if there is some activity on it, commonly measured in terms of the number of published scientific papers. How to find them? There exist well-respected listings where scientific journals are ascribed to one or more knowledge fields. Such lists are human-made, but the complexity begins when a field covers more than one area of knowledge. How to discern if a particular paper is devoted to a field not considered in such lists? In this work, we propose a methodology able to classify the universe of papers into two classes; those belonging to the field of interest, and those that do not. This proposed procedure learns from the title and abstract of papers published in monothematic or "pure" journals. Provided that such journals exist, the procedure could be applied to any field of knowledge. We tested the process with Geographic Information Science. The field has contacts with Computer Science, Mathematics, Cartography, and others, a fact which makes the task very difficult. We also tested our procedure and analyzed its results with three different criteria, illustrating its power and capabilities. Interesting findings were found, where our proposed solution reached similar results as human taggers also similar results compared with state-of-the-art related work. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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6. A systematic literature review on recent trends of machine learning applications in additive manufacturing.
- Author
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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]
- Published
- 2023
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7. Shifting machine learning for healthcare from development to deployment and from models to data.
- Author
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Zhang A, Xing L, Zou J, and Wu JC
- Subjects
- Delivery of Health Care, Electric Power Supplies, Machine Learning
- Abstract
In the past decade, the application of machine learning (ML) to healthcare has helped drive the automation of physician tasks as well as enhancements in clinical capabilities and access to care. This progress has emphasized that, from model development to model deployment, data play central roles. In this Review, we provide a data-centric view of the innovations and challenges that are defining ML for healthcare. We discuss deep generative models and federated learning as strategies to augment datasets for improved model performance, as well as the use of the more recent transformer models for handling larger datasets and enhancing the modelling of clinical text. We also discuss data-focused problems in the deployment of ML, emphasizing the need to efficiently deliver data to ML models for timely clinical predictions and to account for natural data shifts that can deteriorate model performance., (© 2022. Springer Nature Limited.)
- Published
- 2022
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8. Cross-lingual citations in English papers: a large-scale analysis of prevalence, usage, and impact.
- Author
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Saier, Tarek, Färber, Michael, and Tsereteli, Tornike
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CITATION analysis , *SOURCE code , *MACHINE learning , *ELECTRONIC publications , *METADATA - Abstract
Citation information in scholarly data is an important source of insight into the reception of publications and the scholarly discourse. Outcomes of citation analyses and the applicability of citation-based machine learning approaches heavily depend on the completeness of such data. One particular shortcoming of scholarly data nowadays is that non-English publications are often not included in data sets, or that language metadata is not available. Because of this, citations between publications of differing languages (cross-lingual citations) have only been studied to a very limited degree. In this paper, we present an analysis of cross-lingual citations based on over one million English papers, spanning three scientific disciplines and a time span of three decades. Our investigation covers differences between cited languages and disciplines, trends over time, and the usage characteristics as well as impact of cross-lingual citations. Among our findings are an increasing rate of citations to publications written in Chinese, citations being primarily to local non-English languages, and consistency in citation intent between cross- and monolingual citations. To facilitate further research, we make our collected data and source code publicly available. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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9. Machine learning classification of bacterial species using mix-and-match reagents on paper microfluidic chips and smartphone-based capillary flow analysis.
- Author
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Kim, Sangsik, Day, Alexander S., and Yoon, Jeong-Yeol
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CAPILLARY flow , *BACTERIA classification , *MACHINE learning , *ENTEROCOCCUS faecium , *SMARTPHONES , *BACTERIAL cell walls , *SALMONELLA typhimurium - Abstract
Traditionally, specific bioreceptors such as antibodies have rapidly identified bacterial species in environmental water samples. However, this method has the disadvantages of requiring an additional process to conjugate or immobilize bioreceptors on the assay platform, which becomes unstable at room temperature. Here, we demonstrate a novel mix-and-match method to identify bacteria species by loading the bacterial samples with simple bacteria interacting components (not bioreceptors), such as lipopolysaccharides, peptidoglycan, and bovine serum albumin, and carboxylated particles, all separately on multiple channels. Neither covalent conjugation nor surface immobilization was necessary. Interactions between bacteria and the above bacteria interacting components resulted in varied surface tension and viscosity, leading to various flow velocities of capillary action through the paper fibers. The smartphone camera and a custom Python code recorded multiple channel flow velocity, each loaded with different bacteria interacting components. A multi-dimensional data set was obtained for a given bacterial species and concentration and used as a machine learning training model. A support vector machine was applied to classify the six bacterial species: Escherichia coli, Salmonella Typhimurium, Pseudomonas aeruginosa, Staphylococcus aureus, Enterococcus faecium, and Bacillus subtilis. Under optimized conditions, the training model predicts the bacterial species with an accuracy of > 85% of the six bacteria species. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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10. Rapid segmentation and sensitive analysis of CRP with paper-based microfluidic device using machine learning.
- Author
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Ning, Qihong, Zheng, Wei, Xu, Hao, Zhu, Armando, Li, Tangan, Cheng, Yuemeng, Feng, Shaoqing, Wang, Li, Cui, Daxiang, and Wang, Kan
- Subjects
- *
MACHINE learning , *MICROFLUIDIC devices , *SIGNAL convolution , *C-reactive protein , *CONVOLUTIONAL neural networks , *CLASSIFICATION algorithms - Abstract
Microfluidic paper-based analytical devices (μPADs) have been widely used in point-of-care testing owing to their simple operation, low volume of the sample required, and the lack of the need for an external force. To obtain accurate semi-quantitative or quantitative results, μPADs need to respond to the challenges posed by differences in reaction conditions. In this paper, multi-layer μPADs are fabricated by the imprinting method for the colorimetric detection of C-reactive protein (CRP). Different lighting conditions and shooting angles of scenes are simulated in image acquisition, and the detection-related performance of μPADs is improved by using a machine learning algorithm. The You Only Look Once (YOLO) model is used to identify the areas of reaction in μPADs. This model can observe an image only once to predict the objects present in it and their locations. The YOLO model trained in this study was able to identify all the reaction areas quickly without incurring any error. These reaction areas were categorized by classification algorithms to determine the risk level of CRP concentration. Multi-layer perceptron, convolutional neural network, and residual network algorithms were used for the classification tasks, where the latter yielded the highest accuracy of 96%. It has a promising application prospect in fast recognition and analysis of μPADs. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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11. Considerations for artificial intelligence clinical impact in oncologic imaging: an AI4HI position paper.
- Author
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Marti-Bonmati, Luis, Koh, Dow-Mu, Riklund, Katrine, Bobowicz, Maciej, Roussakis, Yiannis, Vilanova, Joan C., Fütterer, Jurgen J., Rimola, Jordi, Mallol, Pedro, Ribas, Gloria, Miguel, Ana, Tsiknakis, Manolis, Lekadir, Karim, and Tsakou, Gianna
- Subjects
- *
ARTIFICIAL intelligence , *MACHINE learning , *INDIVIDUALIZED medicine , *MEDICAL equipment , *CLINICAL medicine , *ONCOLOGY nursing - Abstract
To achieve clinical impact in daily oncological practice, emerging AI-based cancer imaging research needs to have clearly defined medical focus, AI methods, and outcomes to be estimated. AI-supported cancer imaging should predict major relevant clinical endpoints, aiming to extract associations and draw inferences in a fair, robust, and trustworthy way. AI-assisted solutions as medical devices, developed using multicenter heterogeneous datasets, should be targeted to have an impact on the clinical care pathway. When designing an AI-based research study in oncologic imaging, ensuring clinical impact in AI solutions requires careful consideration of key aspects, including target population selection, sample size definition, standards, and common data elements utilization, balanced dataset splitting, appropriate validation methodology, adequate ground truth, and careful selection of clinical endpoints. Endpoints may be pathology hallmarks, disease behavior, treatment response, or patient prognosis. Ensuring ethical, safety, and privacy considerations are also mandatory before clinical validation is performed. The Artificial Intelligence for Health Imaging (AI4HI) Clinical Working Group has discussed and present in this paper some indicative Machine Learning (ML) enabled decision-support solutions currently under research in the AI4HI projects, as well as the main considerations and requirements that AI solutions should have from a clinical perspective, which can be adopted into clinical practice. If effectively designed, implemented, and validated, cancer imaging AI-supported tools will have the potential to revolutionize the field of precision medicine in oncology. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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12. CIRSE Position Paper on Artificial Intelligence in Interventional Radiology.
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Najafi, Arash, Cazzato, Roberto Luigi, Meyer, Bernhard C., Pereira, Philippe L., Alberich, Angel, López, Antonio, Ronot, Maxime, Fritz, Jan, Maas, Monique, Benson, Sean, Haage, Patrick, and Gomez Munoz, Fernando
- Subjects
ARTIFICIAL intelligence ,INTERVENTIONAL radiology ,MACHINE learning ,RADIOLOGISTS ,DIAGNOSTIC ultrasonic imaging personnel ,MEDICAL care ,CLINICAL medicine - Abstract
Artificial intelligence (AI) has made tremendous advances in recent years and will presumably have a major impact in health care. These advancements are expected to affect different aspects of clinical medicine and lead to improvement of delivered care but also optimization of available resources. As a modern specialty that extensively relies on imaging, interventional radiology (IR) is primed to be on the forefront of this development. This is especially relevant since IR is a highly advanced specialty that heavily relies on technology and thus is naturally susceptible to disruption by new technological developments. Disruption always means opportunity and interventionalists must therefore understand AI and be a central part of decision-making when such systems are developed, trained, and implemented. Furthermore, interventional radiologist must not only embrace but lead the change that AI technology will allow. The CIRSE position paper discusses the status quo as well as current developments and challenges. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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13. Development of hydrophobic paper substrates using silane and sol–gel based processes and deriving the best coating technique using machine learning strategies.
- Author
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Manoharan, Kapil, Anwar, Mohd. Tahir, and Bhattacharya, Shantanu
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SURFACE coatings ,SUPERHYDROPHOBIC surfaces ,HYDROPHOBIC surfaces ,MACHINE learning ,INK-jet printing - Abstract
Low energy surface coatings have found wide range of applications for generating hydrophobic and superhydrophobic surfaces. Most of the studies have been related to use of a single coating material over a single substrate or using a single technique. The degree of hydrophobicity is highly dependent on fabrication processes as well as materials being coated and as such warrants a high-level study using experimental optimization leading to the evaluation of the parametric behavior of coatings and their application techniques. Also, a single platform or system which can predict the required set of parameters for generating hydrophobic surface of required nature for given substrate is of requirement. This work applies the powerful machine learning algorithms (Levenberg Marquardt using Gauss Newton and Gradient methods) to evaluate the various processes affecting the anti-wetting behavior of coated printable paper substrates with the capability to predict the most optimized method of coating and materials that may lead to a desirable surface contact angle. The major application techniques used for this study pertain to dip coating, spray coating, spin coating and inkjet printing and silane and sol–gel base coating materials. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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14. Machine learning reveals how complex molecules bind to catalyst surfaces.
- Subjects
- Machine Learning, Algorithms
- Published
- 2022
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15. Recommendation method for academic journal submission based on doc2vec and XGBoost.
- Author
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ZhengWei, Huang, JinTao, Min, YanNi, Yang, Jin, Huang, and Ye, Tian
- Abstract
With the continuous deepening of academic research in various disciplines and the continuous increase in the number of scientific researchers, exploring the mechanism of matching scientific research results and academic journal subjects is a key topic that can assist researchers in selecting suitable journals for submission. The classification and recommendation of academic journals based on a traditional text representation model cannot take advantage of the semantic relationship between words and cannot take into account the diversity of topics received by different journals, which affects the classification and recommendation effect. To solve these problems, this paper uses doc2vec to perform distributed representation of the bibliographic text so that the semantics between the text features are fully preserved. Then, the XGBoost algorithm is used to consider the impact of the different characteristics of the title, abstract, and keywords of the bibliography on the published journal. The academic journal submission recommendation model proposed in this paper can solve the problem that traditional methods cannot make full use of the contextual semantic information and improve the efficiency of scientific research personnel's academic achievement publications. Experiments on Common SCI English journals in the computer field show that when recommending three candidate journals, the accuracy rate reached 84.24%. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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16. Do papers (really) match journals' "aims and scope"? A computational assessment of innovation studies.
- Author
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Santos, Ana Teresa and Mendonça, Sandro
- Abstract
Researchers, science managers and evaluation professionals face a problem when determining the alignment between research results and publication targets. How does a manuscript's content fit a given journal's stated purpose? We develop a framework for understanding how past published papers reveal the actual interests and editorial profile of journal. We articulate an answer to the question by using a total of 16,803 abstracts from articles published from 2010 to 2019 in 20 top innovation-oriented journals. Through a machine learning approach, we trained a text classification algorithm on these materials. The supervised model matched the published contents (abstracts) with journal blurbs with an accuracy rate of 80%. We discover that the content of 25% of the outlet sample might have been of greater interest elsewhere (i.e. to other journals), according to the official editorial positioning available in their homepages. Our conclusions suggest that more can be learned from exploring the abstract-blurb nexus. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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17. The 2022 Robert W. Cahn best paper award.
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Grant Norton, M.
- Subjects
AWARDS ,MATERIALS science ,MACHINE learning ,FUEL cells - Abstract
Professor Grimes summarizes the winning paper and the two runners-up:"Machine learning is certainly of great current interest to address the multivariable materials design challenge. 10.1007/s10853-022-07499-9 5 Wang Z, Lai A, Schuh CA, Radovitzky R. Phase transformation and incompatibility at grain boundaries in zirconia-based shape memory ceramics: a micromechanics-based simulation study. The winner of the 2022 Robert W. Cahn Best Paper award is "Machine learning guided alloy design of high-temperature NiTiHf shape memory alloys" by Udesh M.H.U. Kankanamge, Johannes Reiner, Xingjun Ma, Santiago Corujeira Gallo, and Wei Xu. [Extracted from the article]
- Published
- 2023
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18. Editor's introduction.
- Author
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Kou, Gang
- Subjects
CREDIT risk ,INTEREST rates ,FINANCIAL risk ,SCIENTIFIC literature ,SUPERVISED learning ,MACHINE learning ,CAPITAL gains ,KUZNETS curve - Abstract
The paper "Consumer choices under new payment methods" suggests a payment portfolio model that includes new payment methods that have emerged from the development of cryptocurrency markets and central bank digital currencies (CBDCs). The 35th issue of Financial Innovation (FIN), Volume 8, No.5 (2022) presents 19 papers contributed by authors and co-authors from sixteen countries and areas: Australia, Brazil, Canada, China, Hong Kong, Iran, Italy, Japan, Korea, Netherlands, Saudi Arabia, South Africa, Taiwan, Türkiye, Tunisia and USA. The paper "Predicting cash holdings using supervised machine learning algorithms" implies that with more advanced algorithms, considerable improvements are observed with a maximum of 42% improvement in RMSE values. [Extracted from the article]
- Published
- 2022
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19. Position paper of the EACVI and EANM on artificial intelligence applications in multimodality cardiovascular imaging using SPECT/CT, PET/CT, and cardiac CT.
- Author
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Slart, Riemer H. J. A., Williams, Michelle C., Juarez-Orozco, Luis Eduardo, Rischpler, Christoph, Dweck, Marc R., Glaudemans, Andor W. J. M., Gimelli, Alessia, Georgoulias, Panagiotis, Gheysens, Olivier, Gaemperli, Oliver, Habib, Gilbert, Hustinx, Roland, Cosyns, Bernard, Verberne, Hein J., Hyafil, Fabien, Erba, Paola A., Lubberink, Mark, Slomka, Piotr, Išgum, Ivana, and Visvikis, Dimitris
- Subjects
- *
CARDIAC radionuclide imaging , *ARTIFICIAL intelligence , *SINGLE-photon emission computed tomography , *POSITRON emission tomography computed tomography , *COMPUTED tomography , *MACHINE learning - Abstract
In daily clinical practice, clinicians integrate available data to ascertain the diagnostic and prognostic probability of a disease or clinical outcome for their patients. For patients with suspected or known cardiovascular disease, several anatomical and functional imaging techniques are commonly performed to aid this endeavor, including coronary computed tomography angiography (CCTA) and nuclear cardiology imaging. Continuous improvement in positron emission tomography (PET), single-photon emission computed tomography (SPECT), and CT hardware and software has resulted in improved diagnostic performance and wide implementation of these imaging techniques in daily clinical practice. However, the human ability to interpret, quantify, and integrate these data sets is limited. The identification of novel markers and application of machine learning (ML) algorithms, including deep learning (DL) to cardiovascular imaging techniques will further improve diagnosis and prognostication for patients with cardiovascular diseases. The goal of this position paper of the European Association of Nuclear Medicine (EANM) and the European Association of Cardiovascular Imaging (EACVI) is to provide an overview of the general concepts behind modern machine learning-based artificial intelligence, highlights currently prefered methods, practices, and computational models, and proposes new strategies to support the clinical application of ML in the field of cardiovascular imaging using nuclear cardiology (hybrid) and CT techniques. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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20. How to read and review papers on machine learning and artificial intelligence in radiology: a survival guide to key methodological concepts.
- Author
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Kocak, Burak, Kus, Ece Ates, and Kilickesmez, Ozgur
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ARTIFICIAL intelligence , *MACHINE learning , *FEATURE selection , *INFORMATION sharing , *RADIOLOGY - Abstract
In recent years, there has been a dramatic increase in research papers about machine learning (ML) and artificial intelligence in radiology. With so many papers around, it is of paramount importance to make a proper scientific quality assessment as to their validity, reliability, effectiveness, and clinical applicability. Due to methodological complexity, the papers on ML in radiology are often hard to evaluate, requiring a good understanding of key methodological issues. In this review, we aimed to guide the radiology community about key methodological aspects of ML to improve their academic reading and peer-review experience. Key aspects of ML pipeline were presented within four broad categories: study design, data handling, modelling, and reporting. Sixteen key methodological items and related common pitfalls were reviewed with a fresh perspective: database size, robustness of reference standard, information leakage, feature scaling, reliability of features, high dimensionality, perturbations in feature selection, class balance, bias-variance trade-off, hyperparameter tuning, performance metrics, generalisability, clinical utility, comparison with traditional tools, data sharing, and transparent reporting. Key Points • Machine learning is new and rather complex for the radiology community. • Validity, reliability, effectiveness, and clinical applicability of studies on machine learning can be evaluated with a proper understanding of key methodological concepts about study design, data handling, modelling, and reporting. • Understanding key methodological concepts will provide a better academic reading and peer-review experience for the radiology community. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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21. Review paper on research direction towards cancer prediction and prognosis using machine learning and deep learning models.
- Author
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Murthy, Nimmagadda Satyanarayana and Bethala, Chaitanya
- Abstract
Cancer is characterized as a heterogeneous disease of various types. The early detection and prognosis of a cancer type have turned into a major requirement, as it facilitates successive medical treatment of patients. The research team has classified the cancer patients into high or low-risk groups. This makes it a significant task for the medical teams to study the application of deep learning and machine learning models. As a result, such techniques have been employed for modeling the development and treatment of cancer conditions. Additionally, the machine learning tools can have the ability the significant detection features from complex datasets. Numerous techniques like Support Vector Machines (SVM), Bayesian Networks (BN), Decision Trees (DT), Artificial Neural Networks (ANN), Recurrent Neural Network (RNN), and Deep Neural Network (DNN) has been broadly utilized in cancer research. As per the current survey, the detection rate is about 99.89%, which shows the prediction models' efficiency and precise decision making. However, it is proven that deep learning and machine learning approaches can enhance cancer progression. An adequate level of estimation is required for such approaches for considering the daily medical practice. This survey analyzes and learns the diverse contributions of cancer prediction models using intelligent approaches. Further, the paper tries to categorize the different algorithms, the utilized datasets, and utilized environments. Along with this, various performance measures evaluated in each contribution is sorted out. An extensive search is conducted relevant to machine learning and deep learning methods in cancer susceptibility, recurrence, and survivability prediction, and the existing challenges in this area are clearly described. However, ML models are still in the testing as well as the experimentation phase for cancer prognoses. As the datasets are getting larger with higher quality, researchers are building increasingly accurate models. Moreover, ML models have a long way to go, and most of the models still lack sufficient data and suffer from bias. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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22. Ethical considerations and statistical analysis of industry involvement in machine learning research.
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Hagendorff, Thilo and Meding, Kristof
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MACHINE learning ,GENDER nonconformity ,MACHINERY industry ,STATISTICS ,SOCIAL impact - Abstract
Industry involvement in the machine learning (ML) community seems to be increasing. However, the quantitative scale and ethical implications of this influence are rather unknown. For this purpose, we have not only carried out an informed ethical analysis of the field, but have inspected all papers of the main ML conferences NeurIPS, CVPR, and ICML of the last 5 years—almost 11,000 papers in total. Our statistical approach focuses on conflicts of interest, innovation, and gender equality. We have obtained four main findings. (1) Academic–corporate collaborations are growing in numbers. At the same time, we found that conflicts of interest are rarely disclosed. (2) Industry papers amply mention terms that relate to particular trending machine learning topics earlier than academia does. (3) Industry papers are not lagging behind academic papers with regard to how often they mention keywords that are proxies for social impact considerations. (4) Finally, we demonstrate that industry papers fall short of their academic counterparts with respect to the ratio of gender diversity. We believe that this work is a starting point for an informed debate within and outside of the ML community. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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23. Process Mining Workshops. ICPM 2022 International Workshops, Bozen-Bolzano, Italy, October 23-28, 2022, Revised Selected Papers.
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Montali, Marco, Senderovich, Arik, Weidlich, Matthias, and Montali, Marco
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Data mining ,Business mathematics & systems ,Machine learning ,Information technology: general issues ,Health & safety aspects of IT ,process mining ,process discovery ,process analytics ,process querying ,conformance checking ,predictive process monitoring ,data science ,knowledge graphs ,event data ,streaming analytics ,machine learning ,deep learning ,business process management ,health informatics - Abstract
Summary: This open access book constitutes revised selected papers from the International Workshops held at the 4th International Conference on Process Mining, ICPM 2022, which took place in Bozen-Bolzano, Italy, during October 23-28, 2022. The conference focuses on the area of process mining research and practice, including theory, algorithmic challenges, and applications. The co-located workshops provided a forum for novel research ideas. The 42 papers included in this volume were carefully reviewed and selected from 89 submissions. They stem from the following workshops: - 3rd International Workshop on Event Data and Behavioral Analytics (EDBA) - 3rd International Workshop on Leveraging Machine Learning in Process Mining (ML4PM) - 3rd International Workshop on Responsible Process Mining (RPM) (previously known as Trust, Privacy and Security Aspects in Process Analytics) - 5th International Workshop on Process-Oriented Data Science for Healthcare (PODS4H) - 3rd International Workshop on Streaming Analytics for Process Mining (SA4PM) - 7th International Workshop on Process Querying, Manipulation, and Intelligence (PQMI) - 1st International Workshop on Education meets Process Mining (EduPM) - 1st International Workshop on Data Quality and Transformation in Process Mining (DQT-PM)
24. Feature engineering of EEG applied to mental disorders: a systematic mapping study.
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García-Ponsoda, Sandra, García-Carrasco, Jorge, Teruel, Miguel A., Maté, Alejandro, and Trujillo, Juan
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MENTAL illness ,MACHINE learning ,ELECTROENCEPHALOGRAPHY ,ARTIFICIAL intelligence ,ENGINEERING - Abstract
Around a third of the total population of Europe suffers from mental disorders. The use of electroencephalography (EEG) together with Machine Learning (ML) algorithms to diagnose mental disorders has recently been shown to be a prominent research area, as exposed by several reviews focused on the field. Nevertheless, previous to the application of ML algorithms, EEG data should be correctly preprocessed and prepared via Feature Engineering (FE). In fact, the choice of FE techniques can make the difference between an unusable ML model and a simple, effective model. In other words, it can be said that FE is crucial, especially when using complex, non-stationary data such as EEG. To this aim, in this paper we present a Systematic Mapping Study (SMS) focused on FE from EEG data used to identify mental disorders. Our SMS covers more than 900 papers, making it one of the most comprehensive to date, to the best of our knowledge. We gathered the mental disorder addressed, all the FE techniques used, and the Artificial Intelligence (AI) algorithm applied for classification from each paper. Our main contributions are: (i) we offer a starting point for new researchers on these topics, (ii) we extract the most used FE techniques to classify mental disorders, (iii) we show several graphical distributions of all used techniques, and (iv) we provide critical conclusions for detecting mental disorders. To provide a better overview of existing techniques, the FE process is divided into three parts: (i) signal transformation, (ii) feature extraction, and (iii) feature selection. Moreover, we classify and analyze the distribution of existing papers according to the mental disorder they treat, the FE processes used, and the ML techniques applied. As a result, we provide a valuable reference for the scientific community to identify which techniques have been proven and tested and where the gaps are located in the current state of the art. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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25. PLS Papers.
- Author
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Westland, J. Christopher
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MACHINE learning ,CONSUMER behavior ,DISTRIBUTION (Probability theory) ,STRUCTURAL equation modeling - Published
- 2023
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26. Introduction to the special issue on self‑managing and hardware‑optimized database systems 2022.
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Costa, Constantinos and Petrov, Ilia
- Subjects
DATABASES ,INTELLIGENT transportation systems ,DATABASE management ,INFORMATION storage & retrieval systems ,DYNAMIC random access memory ,MACHINE learning - Abstract
Particularly, the relational database management systems and the big data systems (e.g., Key-Value stores, Document stores, Graph stores and Graph Computation Systems, Spark, MapReduce/Hadoop, or Data Stream Processing Systems) have evolved with novel additions and extensions. The paper by Harish Kumar Harihara Subramanian et al. on supporting DBMS GPU-based operations with out-of-the-box libraries describes the ongoing research in the database community regarding the use of GPUs for query processing. Data management systems have evolved in terms of functionality, performance characteristics, complexity, and variety during the last 40 years. [Extracted from the article]
- Published
- 2023
- Full Text
- View/download PDF
27. Machine Learning for Cyber Physical Systems. Selected papers from the International Conference ML4CPS 2020.
- Author
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Beyerer, Jürgen, Maier, Alexander, Niggemann, Oliver, and Beyerer, Jürgen
- Subjects
Electrical engineering ,Communications engineering / telecommunications ,Computer networking & communications ,Cyber-physical systems, IoT ,Communications Engineering, Networks ,Computer Systems Organization and Communication Networks ,Cyber-Physical Systems ,Computer Engineering and Networks ,Machine Learning ,Artificial Intelligence ,Cognitive Robotics ,Internet of Things ,Computational intelligence ,Computer-based algorithms ,Smart grid ,Open Access ,Industry 4.0 ,Cybernetics & systems theory - Abstract
Summary: This open access proceedings presents new approaches to Machine Learning for Cyber Physical Systems, experiences and visions. It contains selected papers from the fifth international Conference ML4CPS - Machine Learning for Cyber Physical Systems, which was held in Berlin, March 12-13, 2020. Cyber Physical Systems are characterized by their ability to adapt and to learn: They analyze their environment and, based on observations, they learn patterns, correlations and predictive models. Typical applications are condition monitoring, predictive maintenance, image processing and diagnosis. Machine Learning is the key technology for these developments.
28. Beyond digital shadows: A Digital Twin for monitoring earthwork operation in large infrastructure projects.
- Author
-
Rogage, Kay, Mahamedi, Elham, Brilakis, Ioannis, and Kassem, Mohamad
- Subjects
DIGITAL twins ,DIGITAL footprint ,EARTHWORK ,INFRASTRUCTURE (Economics) ,ELECTRONIC paper - Abstract
Current research on Digital Twin (DT) is largely focused on the performance of built assets in their operational phases as well as on urban environment. However, Digital Twin has not been given enough attention to construction phases, for which this paper proposes a Digital Twin framework for the construction phase, develops a DT prototype and tests it for the use case of measuring the productivity and monitoring of earthwork operation. The DT framework and its prototype are underpinned by the principles of versatility, scalability, usability and automation to enable the DT to fulfil the requirements of large-sized earthwork projects and the dynamic nature of their operation. Cloud computing and dashboard visualisation were deployed to enable automated and repeatable data pipelines and data analytics at scale and to provide insights in near-real time. The testing of the DT prototype in a motorway project in the Northeast of England successfully demonstrated its ability to produce key insights by using the following approaches: (i) To predict equipment utilisation ratios and productivities; (ii) To detect the percentage of time spent on different tasks (i.e., loading, hauling, dumping, returning or idling), the distance travelled by equipment over time and the speed distribution; and (iii) To visualise certain earthwork operations. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
29. ElmNet: a benchmark dataset for generating headlines from Persian papers.
- Author
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Shenassa, Mohammad E. and Minaei-Bidgoli, Behrouz
- Subjects
HEADLINES ,PERSIAN language ,IRANIAN languages ,DEEP learning - Abstract
Headline generation is a challenging subtask of abstractive text summarization, which its output should be a summary, shorter than one sentence. It would be precious to develop a dataset for the evaluation of abstractive summarization methods on this task in the Persian language. There are several datasets for headline generation in Persian, most of which are not large enough to be used by more sophisticated methods of text summarization, such as deep learning models. Moreover, all of these datasets are focused on daily news and there is no dataset for summarizing scientific Persian papers. In this article, we present "ElmNet," a headline generation dataset of about 400,000 abstract/headline pairs of scientific papers, gathered from six major publishers for scientific articles in Persian. We, moreover, evaluate the performance of the most important deep learning-based headline generation methods, on the proposed dataset. The results prove the comparability of the performance of the state-of-the-art methods on this task, to their results on the existing English datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
30. Two-stage approach to extracting visual objects from paper documents.
- Author
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Forczmański, Paweł and Markiewicz, Andrzej
- Subjects
AUTOMATIC detection in radar ,STATISTICAL bootstrapping ,ELECTRONIC paper ,MACHINE learning ,ACCURACY - Abstract
In the paper we present an approach to the automatic detection and identification of important elements in paper documents. This includes stamps, logos, printed text blocks, signatures and tables. Presented approach consists of two stages. The first one includes object detection by means of AdaBoost cascade of weak classifiers and Haar-like features. Resulting image blocks are, at the second stage, subjected to verification based on selected features calculated from recently proposed low-level descriptors combined with certain classifiers representing current machine-learning approaches. The training phase, for both stages, uses bootstrapping, i.e., integrative process, aiming at increasing the accuracy. Experiments performed on large set of digitized paper documents showed that adopted strategy is useful and efficient. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
31. The artistic design of user interaction experience for mobile systems based on context-awareness and machine learning.
- Author
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Liu, Lina
- Subjects
USER experience ,ART appreciation ,PAPER arts ,FOLK art ,AUGMENTED reality ,MACHINE learning - Abstract
This paper investigates the art design of user interaction experience in mobile systems through the methods of contextual perception and machine learning. The theoretical foundations for the design of intangible cultural heritage interactive display resources include digital display theory, intangible cultural heritage education theory, embodied cognition theory, and gamification design theory. Based on the modelling and analysis of the theoretical foundations, the design principles are derived, including the heritage education principle, the somatic interaction design principle, and the content design principle. In this paper, we use ontologies to construct user knowledge models, fuse multi-situational similarity metrics, screen out candidate neighbour sets through preliminary screening, then combine the user's activity to construct time-based weight tensor scores, use tensor decomposition to obtain recommendation evaluation values, and finally use the recommendation evaluation values to make artistic recommendations. The experimental results show that the algorithm can still obtain a good recommendation implementation in the case of extremely sparse data. The analysis of the fit between augmented reality and folk art appreciation class, as well as the reference to relevant application cases, make design and practice of augmented reality application in folk art appreciation class, try to solve the common problems in folk art appreciation class, analyse the feedback effect and make a summary and outlook. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
32. Image Matching Across Wide Baselines: From Paper to Practice.
- Author
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Jin, Yuhe, Mishkin, Dmytro, Mishchuk, Anastasiia, Matas, Jiri, Fua, Pascal, Yi, Kwang Moo, and Trulls, Eduard
- Subjects
- *
IMAGE registration , *MODULAR construction , *CUTTING machines , *MACHINE learning , *PIPELINES - Abstract
We introduce a comprehensive benchmark for local features and robust estimation algorithms, focusing on the downstream task—the accuracy of the reconstructed camera pose—as our primary metric. Our pipeline's modular structure allows easy integration, configuration, and combination of different methods and heuristics. This is demonstrated by embedding dozens of popular algorithms and evaluating them, from seminal works to the cutting edge of machine learning research. We show that with proper settings, classical solutions may still outperform the perceived state of the art. Besides establishing the actual state of the art, the conducted experiments reveal unexpected properties of structure from motion pipelines that can help improve their performance, for both algorithmic and learned methods. Data and code are online (https://github.com/ubc-vision/image-matching-benchmark), providing an easy-to-use and flexible framework for the benchmarking of local features and robust estimation methods, both alongside and against top-performing methods. This work provides a basis for the Image Matching Challenge (https://image-matching-challenge.github.io). [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
33. How are texts analyzed in blockchain research? A systematic literature review.
- Author
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Zhuo, Xian, Irresberger, Felix, and Bostandzic, Denefa
- Subjects
USER-generated content ,BLOCKCHAINS ,SENTIMENT analysis ,MACHINE learning ,CRYPTOCURRENCIES ,PUBLIC opinion - Abstract
This paper provides a systematic literature review of text analysis methodologies used in blockchain-related research to comprehend and synthesize existing studies across disciplines and define future research directions. We summarize the research scope, text data, and methodologies of 124 papers and identify the two most common combinations of these dimensions: (1) papers that focus on specific cryptocurrencies tend to apply sentiment analysis to instant user-generated content or news articles to discover the correlations between public opinion and market behavior, and (2) studies that examine the broad concept of blockchain with text data from documents published by companies tend to apply topic modeling techniques to explore classifications and trends in blockchain development. We discover five major research topics in the academic literature: relationship discovery, cryptocurrency performance prediction, classification and trend, crime and regulation, and perception of blockchain. Based on these findings, we highlight three potential research directions for researchers to select topics and implement suitable methodologies for text analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
34. Examining deep learning's capability to spot code smells: a systematic literature review.
- Author
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Malhotra, Ruchika, Jain, Bhawna, and Kessentini, Marouane
- Subjects
DEEP learning ,SMELL ,RECURRENT neural networks ,CONVOLUTIONAL neural networks ,COMPUTER software development ,MACHINE learning - Abstract
Code smells violate software development principles that make the software more prone to errors and changes. Researchers have developed code smell detectors using manual and semi-automatic methods to identify these issues. However, three key challenges have limited the practical use of these detectors: developers' subjective perceptions of code smells, lack of consensus in the detection process, and difficulty in setting appropriate detection thresholds. While code smell detection using machine learning has progressed significantly, there still appears to be a gap in understanding the effective utilization of deep learning (DL) approaches. This paper aims to review and identify current methods for code smell detection using DL techniques. A systematic literature review is conducted on 35 primary studies from a collection of 8739 publications between 2013 and the present. The analysis reveals that common code smells detected include Feature Envy, God Classes, Long Methods, Complex Classes, and Large Classes. The most popular DL algorithms used are Recurrent Neural Networks (RNN) and Convolutional Neural Networks (CNN), often combined with other techniques for better results. Algorithms that train models on large datasets with fewer independent variables demonstrate exemplary performance. The paper also highlights open issues and provides guidelines for future metric identification and selection research. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
35. Automatic detection of health misinformation: a systematic review.
- Author
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Schlicht, Ipek Baris, Fernandez, Eugenia, Chulvi, Berta, and Rosso, Paolo
- Abstract
The spread of health misinformation has the potential to cause serious harm to public health, from leading to vaccine hesitancy to adoption of unproven disease treatments. In addition, it could have other effects on society such as an increase in hate speech towards ethnic groups or medical experts. To counteract the sheer amount of misinformation, there is a need to use automatic detection methods. In this paper we conduct a systematic review of the computer science literature exploring text mining techniques and machine learning methods to detect health misinformation. To organize the reviewed papers, we propose a taxonomy, examine publicly available datasets, and conduct a content-based analysis to investigate analogies and differences among Covid-19 datasets and datasets related to other health domains. Finally, we describe open challenges and conclude with future directions. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
36. Guest editorial: Special Issue on Artificial Intelligence and Emerging Computational Approaches for Tribology.
- Author
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Zhang, Zhinan, Pan, Shuaihang, and Raeymaekers, Bart
- Subjects
COMPUTATIONAL intelligence ,ARTIFICIAL intelligence ,TRIBOLOGY ,MACHINE learning ,STEREO vision (Computer science) ,ENGINEERING laboratories ,CAVITATION erosion ,LUBRICATING oils ,MEDICAL informatics - Abstract
This document is a guest editorial from the journal Friction, focusing on the special issue of Artificial Intelligence (AI) and emerging computational approaches for tribology. Tribology research, which studies friction and wear, has traditionally relied on extensive experimentation. However, AI and computational approaches offer new opportunities to explore complex processes in tribology and push the boundaries of research. The special issue includes 15 papers covering various aspects of AI and machine learning in tribology, such as wear assessment, lubrication performance, contact wear prediction, and composite materials design. These articles highlight the transformative impact of AI in tribology research and provide valuable insights for future innovations. [Extracted from the article]
- Published
- 2024
- Full Text
- View/download PDF
37. Learning to Generate Posters of Scientific Papers by Probabilistic Graphical Models.
- Author
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Qiang, Yu-Ting, Fu, Yan-Wei, Yu, Xiao, Guo, Yan-Wen, Zhou, Zhi-Hua, and Sigal, Leonid
- Subjects
MACHINE learning ,FINITE element method ,DATA analysis ,GRAPHICAL modeling (Statistics) ,OCCUPATIONAL therapy - Abstract
Researchers often summarize their work in the form of scientific posters. Posters provide a coherent and efficient way to convey core ideas expressed in scientific papers. Generating a good scientific poster, however, is a complex and time-consuming cognitive task, since such posters need to be readable, informative, and visually aesthetic. In this paper, for the first time, we study the challenging problem of learning to generate posters from scientific papers. To this end, a data-driven framework, which utilizes graphical models, is proposed. Specifically, given content to display, the key elements of a good poster, including attributes of each panel and arrangements of graphical elements, are learned and inferred from data. During the inference stage, the maximum a posterior (MAP) estimation framework is employed to incorporate some design principles. In order to bridge the gap between panel attributes and the composition within each panel, we also propose a recursive page splitting algorithm to generate the panel layout for a poster. To learn and validate our model, we collect and release a new benchmark dataset, called NJU-Fudan Paper-Poster dataset, which consists of scientific papers and corresponding posters with exhaustively labelled panels and attributes. Qualitative and quantitative results indicate the effectiveness of our approach. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
38. Multimedia medical data-driven decision making.
- Author
-
Chakraborty, Chinmay, Diván, Mario José, and Mahmoudi, Saïd
- Subjects
MEDICAL decision making ,DEEP learning ,MACHINE learning ,ARTIFICIAL intelligence ,COMPUTATIONAL intelligence ,SIGNAL processing - Abstract
The data-driven decision-making solutions have become more demandable in healthcare for development, testing, and trials; it has intended to be a part of both hospitals and homes. The sixth paper by Ahmed et al. proposes institutional data collaboration alongside an adversarial evasion method to keep the data secure. In line with these efforts, the central theme of this Special Issue is to report novel methodologies, theories, technologies, techniques, and solutions for medical data analytics techniques for multimedia applications. [Extracted from the article]
- Published
- 2022
- Full Text
- View/download PDF
39. Challenges and opportunities of machine learning control in building operations.
- Author
-
Zhang, Liang, Chen, Zhelun, Zhang, Xiangyu, Pertzborn, Amanda, and Jin, Xin
- Abstract
Machine learning control (MLC) is a highly flexible and adaptable method that enables the design, modeling, tuning, and maintenance of building controllers to be more accurate, automated, flexible, and adaptable. The research topic of MLC in building energy systems is developing rapidly, but to our knowledge, no review has been published that specifically and systematically focuses on MLC for building energy systems. This paper provides a systematic review of MLC in building energy systems. We review technical papers in two major categories of applications of machine learning in building control: (1) building system and component modeling for control, and (2) control process learning. We identify MLC topics that have been well-studied and those that need further research in the field of building operation control. We also identify the gaps between the present and future application of MLC and predict future trends and opportunities. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
40. Investigating the contribution of author- and publication-specific features to scholars' h-index prediction.
- Author
-
Momeni, Fakhri, Mayr, Philipp, and Dietze, Stefan
- Subjects
RESEARCH personnel ,ELECTRONIC publications ,SCHOLARS ,STUDENT mobility - Abstract
Evaluation of researchers' output is vital for hiring committees and funding bodies, and it is usually measured via their scientific productivity, citations, or a combined metric such as the h-index. Assessing young researchers is more critical because it takes a while to get citations and increment of h-index. Hence, predicting the h-index can help to discover the researchers' scientific impact. In addition, identifying the influential factors to predict the scientific impact is helpful for researchers and their organizations seeking solutions to improve it. This study investigates the effect of the author, paper/venue-specific features on the future h-index. For this purpose, we used a machine learning approach to predict the h-index and feature analysis techniques to advance the understanding of feature impact. Utilizing the bibliometric data in Scopus, we defined and extracted two main groups of features. The first relates to prior scientific impact, and we name it 'prior impact-based features' and includes the number of publications, received citations, and h-index. The second group is 'non-prior impact-based features' and contains the features related to author, co-authorship, paper, and venue characteristics. We explored their importance in predicting researchers' h-index in three career phases. Also, we examined the temporal dimension of predicting performance for different feature categories to find out which features are more reliable for long- and short-term prediction. We referred to the gender of the authors to examine the role of this author's characteristics in the prediction task. Our findings showed that gender has a very slight effect in predicting the h-index. Although the results demonstrate better performance for the models containing prior impact-based features for all researchers' groups in the near future, we found that non-prior impact-based features are more robust predictors for younger scholars in the long term. Also, prior impact-based features lose their power to predict more than other features in the long term. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
41. New Advances in Artificial Neural Networks and Machine Learning Techniques.
- Author
-
Valenzuela, Olga, Catala, Andreu, Anguita, Davide, and Rojas, Ignacio
- Subjects
MACHINE learning ,ARTIFICIAL intelligence ,AMBIENT intelligence ,COMPUTATIONAL intelligence ,EXPERT systems ,INTERNET forums ,ARTIFICIAL neural networks - Abstract
To verify the behavior of the system, the authors have used several publicly available datasets, obtaining satisfactory results. In this paper, the authors have presented a new CNN architecture based on the Ordinal Binary Decomposition (OBD) technique using Error Corrected Output Codes (ECOC) and have shown how it can improve performance over previously proposed methods. We are proud to present the set of final accepted papers for the Neural Processing Letters with contributions presented at the IWANNN conference - the International Work-Conference on Artificial Neural Networks- held online during June 16-18, 2021 (http://iwann.uma.es/). [Extracted from the article]
- Published
- 2023
- Full Text
- View/download PDF
42. Two heads are better than one: current landscape of integrating QSP and machine learning: An ISoP QSP SIG white paper by the working group on the integration of quantitative systems pharmacology and machine learning.
- Author
-
Zhang, Tongli, Androulakis, Ioannis P., Bonate, Peter, Cheng, Limei, Helikar, Tomáš, Parikh, Jaimit, Rackauckas, Christopher, Subramanian, Kalyanasundaram, Cho, Carolyn R., on behalf of the Working Group, Borisov, Ivan, Broderick, Gordon, Damian, Valeriu, Dariolli, Rafael, Demin, Oleg, Ellinwood, Nicholas, Fey, Dirk, Gulati, Abhishek, Helikar, Tomas, and Jordie, Eric
- Abstract
Quantitative systems pharmacology (QSP) modeling is applied to address essential questions in drug development, such as the mechanism of action of a therapeutic agent and the progression of disease. Meanwhile, machine learning (ML) approaches also contribute to answering these questions via the analysis of multi-layer 'omics' data such as gene expression, proteomics, metabolomics, and high-throughput imaging. Furthermore, ML approaches can also be applied to aspects of QSP modeling. Both approaches are powerful tools and there is considerable interest in integrating QSP modeling and ML. So far, a few successful implementations have been carried out from which we have learned about how each approach can overcome unique limitations of the other. The QSP + ML working group of the International Society of Pharmacometrics QSP Special Interest Group was convened in September, 2019 to identify and begin realizing new opportunities in QSP and ML integration. The working group, which comprises 21 members representing 18 academic and industry organizations, has identified four categories of current research activity which will be described herein together with case studies of applications to drug development decision making. The working group also concluded that the integration of QSP and ML is still in its early stages of moving from evaluating available technical tools to building case studies. This paper reports on this fast-moving field and serves as a foundation for future codification of best practices. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
43. Image Fuzzy Edge Information Segmentation Based on Computer Vision and Machine Learning.
- Author
-
Luo, Tianye, Li, Shijun, Li, Ji, Guo, Jie, Feng, Ruilong, Mu, Ye, Hu, Tianli, Sun, Yu, Guo, Ying, and Gong, He
- Abstract
Image segmentation is a key problem in the field of machine vision. Its core goal is to separate the target and background in the region of interest from the image and directly affect the accuracy of subsequent operations such as target recognition and image understanding. In the past decades, there have been many good image segmentation algorithms. In recent years, the deep learning method represented by deep learning has made great progress in the field of image segmentation. In this paper, some commonly used image segmentation algorithms based on machine learning were reviewed, and their theoretical and experimental studies were carried out. In this paper, the application prospect of machine learning in image segmentation was prospected. The existing image segmentation methods are mainly divided into the following categories: threshold-based segmentation methods, region-based segmentation methods, edge-based segmentation methods, and segmentation methods based on specific theories. In recent years, with the rapid progress of computer vision technology, the requirements for the accuracy of object image edge information segmentation have become increasingly high. The main reason for image segmentation is to better obtain object information. However, due to interference conditions such as lighting and noise, image blurry edge information segmentation has become the most difficult point in the development of computer vision technology. In the comparative experiment of algorithms, the results showed that in the training set, the response time of Deep Neural Network (DNN) algorithm, Cluster Analysis (CA) algorithm, and Support Vector Machine (SVM) algorithm was 13.72 s, 16.88 s and 17.29 s when the number of samples was 150. In the test set, when the sample number was 50, the recognition rate of DNN algorithm was 93.7%; the recognition rate of CA algorithm was 87.9%; the recognition rate of SVM algorithm was 84.3%. Therefore, the research of image fuzzy edge information segmentation based on computer vision and machine learning is essential. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
44. Rigorous engineering of collective adaptive systems – 2nd special section.
- Author
-
Wirsing, Martin, Jähnichen, Stefan, and De Nicola, Rocco
- Subjects
BIOLOGICALLY inspired computing ,ENGINEERING ,MACHINE learning ,SOFTWARE engineering - Abstract
An adaptive system is able to adapt at runtime to dynamically changing environments and to new requirements. Adaptive systems can be single adaptive entities or collective ones that consist of several collaborating entities. Rigorous engineering requires appropriate methods and tools that help guaranteeing that an adaptive system lives up to its intended purpose. This paper introduces the special section on "Rigorous Engineering of Collective Adaptive Systems." It presents the 11 contributions of the section categorizing them into five distinct research lines: correctness by design and synthesis, computing with bio-inspired communication, new system models, machine learning, and programming and analyzing ensembles. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
45. Autonomous Agents and Multiagent Systems - AAMAS 2017 Workshops, Best Papers, São Paulo, Brazil, May 8-12, 2017, Revised Selected Papers
- Author
-
Sukthankar, Gita and Rodríguez-Aguilar, Juan Antonio
- Subjects
Artificial intelligence ,Information theory ,Intelligent agents ,Formal methods ,Multi-agent systems ,QoS ,Agents ,Robotics ,Semantics ,Graph theory ,Formal languages ,MAS ,Machine learning ,Reinforcement learning ,Cooperation and coordination - Abstract
This book features a selection of best papers from 13 workshops held at the International Conference on Autonomous Agents and Multiagent Systems, AAMAS 2017, held in Sao Paulo, Brazil, in May 2017. The 17 full papers presented in this volume were carefully reviewed and selected for inclusion in this volume. They cover specific topics, both theoretical and applied, in the general area of autonomous agents and multiagent systems.
- Published
- 2017
46. Adjust the format of papers to improve description by AI.
- Author
-
Day, Terence
- Abstract
Letter to the Editor [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
47. Editorial on Papers Using Numerical Methods, Artificial Intelligence and Machine Learning.
- Subjects
ARTIFICIAL intelligence ,MACHINE learning ,DISCRETE element method ,ROCK mechanics ,ENGINEERING design - Abstract
The recent rise of methods using Artificial Intelligence (AI) and Machine Learning (ML) has led to similar problems. Although the title was relatively narrow, the editorial addressed the general issue of papers that concentrated on the numerical method development without much relation to rock mechanics or rock engineering. [Extracted from the article]
- Published
- 2023
- Full Text
- View/download PDF
48. COVID-19 disease diagnosis from paper-based ECG trace image data using a novel convolutional neural network model.
- Author
-
Irmak, Emrah
- Abstract
Clinical reports show that COVID-19 disease has impacts on the cardiovascular system in addition to the respiratory system. Available COVID-19 diagnostic methods have been shown to have limitations. In addition to current diagnostic methods such as low-sensitivity standard RT-PCR tests and expensive medical imaging devices, the development of alternative methods for the diagnosis of COVID-19 disease would be beneficial for control of the COVID-19 pandemic. Further, it is important to quickly and accurately detect abnormalities caused by COVID-19 on the cardiovascular system via ECG. In this study, the diagnosis of COVID-19 disease is proposed using a novel deep Convolutional Neural Network model by using only ECG trace images created from ECG signals of COVID-19 infected patients based on the abnormalities caused by the COVID-19 virus on the cardiovascular system. An overall classification accuracy of 98.57%, 93.20%, 96.74% and AUC value of 0.9966, 0.9771, 0.9905 is achieved for COVID-19 vs. Normal, COVID-19 vs. Abnormal Heartbeats, COVID-19 vs. Myocardial Infarction binary classification tasks, respectively. In addition, an overall classification accuracy of 86.55% and 83.05% is achieved for COVID-19 vs. Abnormal Heartbeats vs. Myocardial Infarction and Normal vs. COVID-19 vs. Abnormal Heartbeats vs. Myocardial Infarction multi-classification tasks. This study is believed to have great potential to speed up the diagnosis and treatment of COVID-19 patients, saving clinicians time and facilitating the control of the pandemic. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
49. IInception-CBAM-IBiGRU based fault diagnosis method for asynchronous motors.
- Author
-
Li, Zhengting, Wang, Peiliang, yang, Zeyu, Li, Xiangyang, and Jia, Ruining
- Subjects
FAULT diagnosis ,DEEP learning ,DIAGNOSIS methods ,MACHINE learning - Abstract
Aiming at the problems of insufficient extraction of asynchronous motor fault features by traditional deep learning algorithms and poor diagnosis of asynchronous motor faults in robust noise environments, this paper proposes an end-to-end fault diagnosis method for asynchronous motors based on IInception-CBAM-IBiGRU. The method first uses a signal-to-grayscale image conversion method to convert one-dimensional vibration signals into two-dimensional images and initially extracts shallow features through two-dimensional convolution; then the Improved Inception (IInception) module is used as a residual block to learning features at different scales with a residual structure, and extracts its important feature information through the Convolutional Block Attention Module (CBAM) to extract important feature information and adjust the weight parameters; then the feature information is input to the Improved Bi-directional Gate Recurrent Unit (IBiGRU) to extract its timing features further; finally, the fault identification is achieved by the SoftMax function. The primary hyperparameters in the model are optimized by the Weighted Mean Of Vectors Algorithm (INFO). The experimental results show that the method is effective in fault diagnosis of asynchronous motors, with an accuracy rate close to 100%, and can still maintain a high accuracy rate under the condition of low noise ratio, with good robustness and generalization ability. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
50. Cross-influence of information and risk effects on the IPO market: exploring risk disclosure with a machine learning approach.
- Author
-
Xia, Huosong, Weng, Juan, Boubaker, Sabri, Zhang, Zuopeng, and Jasimuddin, Sajjad M.
- Subjects
MACHINE learning ,GOING public (Securities) ,DISCLOSURE - Abstract
The paper examines whether the structure of the risk factor disclosure in an IPO prospectus helps explain the cross-section of first-day returns in a sample of Chinese initial public offerings. This paper analyzes the semantics and content of risk disclosure based on an unsupervised machine learning algorithm. From both long-term and short-term perspectives, this paper explores how the information effect and risk effect of risk disclosure play their respective roles. The results show that risk disclosure has a stronger risk effect at the semantic novelty level and a more substantial information effect at the risk content level. A novel aspect of the paper lies in the use of text analysis (semantic novelty and content richness) to characterize the structure of the risk factor disclosure. The study shows that initial IPO returns negatively correlate with semantic novelty and content richness. We show the interaction between risk effect and information effect on risk disclosure under the nature of the same stock plate. When enterprise information transparency is low, the impact of semantic novelty and content richness on the IPO market is respectively enhanced. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
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