Machine Learning and Probabilistic Graphical Models for Decision Support Systems

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Anomaly Detection
Bayesian Optimization Algorithm
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Category=UYQM
Centered Log Ratio
Compositional Data Analysis
cybersecurity anomaly detection
Data Set
DBN
DSS
Economic Statistical Design
Edge Computing
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federated learning applications
healthcare analytics methods
IC Distribution
Isometric Log Ratio
Isometric Log Ratio Transformation
Jamming Signal
Ml Algorithm
Nonparametric Charts
Nonparametric Control Chart
OC Distribution
Predictive Maintenance
predictive maintenance in smart manufacturing
Probabilistic Graphical Models
RBF NN
reinforcement learning strategies
risk assessment modeling
RUL Prediction
supply chain optimization ai
Support Vector Data Description
SVM
Textile Manufacturing Process

Product details

  • ISBN 9781032039480
  • Weight: 1300g
  • Dimensions: 178 x 254mm
  • Publication Date: 13 Oct 2022
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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This book presents recent advancements in research, a review of new methods and techniques, and applications in decision support systems (DSS) with Machine Learning and Probabilistic Graphical Models, which are very effective techniques in gaining knowledge from Big Data and in interpreting decisions. It explores Bayesian network learning, Control Chart, Reinforcement Learning for multicriteria DSS, Anomaly Detection in Smart Manufacturing with Federated Learning, DSS in healthcare, DSS for supply chain management, etc. Researchers and practitioners alike will benefit from this book to enhance the understanding of machine learning, Probabilistic Graphical Models, and their uses in DSS in the context of decision making with uncertainty. The real-world case studies in various fields with guidance and recommendations for the practical applications of these studies are introduced in each chapter.

Kim Phuc Tran is an Associate Professor of Artificial Intelligence and Data Science at ENSAIT & GEMTEX,
University of Lille, France, and a Senior Scientific Advisor at Dong A University, Vietnam. He obtained a Ph.D. in
Automation and Applied Informatics at the University of Nantes, and an HDR (Dr. Habil.) in Computer Science and
Automation at the University of Lille, France. His research focuses on Artificial Intelligence and applications. He has
published more than 60 papers in SCIE peer-reviewed international journals and proceedings of international conferences. He edited 3 books with Springer Nature and CRC Press, Taylor & Francis Group.