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Data Mining. Practical Machine Learning Tools and Techniques. Edition No. 5

  • Book

  • May 2025
  • Elsevier Science and Technology
  • ID: 6006184

Data Mining: Practical Machine Learning Tools and Techniques, Fifth Edition, offers a thorough grounding in machine learning concepts, along with practical advice on applying these tools and techniques in real-world data mining situations. This highly anticipated new edition of the most acclaimed work on data mining and machine learning teaches readers everything they need to know to get going, from preparing inputs, interpreting outputs, evaluating results, to the algorithmic methods at the heart of successful data mining approaches.

Extensive updates reflect the technical changes and modernizations that have taken place in the field since the last edition, including more recent deep learning content on topics such as generative AI (GANs, VAEs, diffusion models), large language models (transformers, BERT and GPT models), and adversarial examples, as well as a comprehensive treatment of ethical and responsible artificial intelligence topics. Authors Ian H. Witten, Eibe Frank, Mark A. Hall, and Christopher J. Pal, along with new author James R. Foulds, include today’s techniques coupled with the methods at the leading edge of contemporary research

Table of Contents

PART I: INTRODUCTION TO DATA MINING
1. What’s it all about?
2. Input: concepts, instances, attributes
3. Output: knowledge representation
4. Algorithms: the basic methods
5. Credibility: evaluating what’s been learned
6. Preparation: data preprocessing and exploratory data analysis
7. Ethics: what are the impacts of what's been learned?

PART II: MORE ADVANCED MACHINE LEARNING SCHEMES
8. Ensemble learning
9. Extending instance-based and linear models
10. Deep learning: fundamentals
11. Advanced deep learning methods
12. Beyond supervised and unsupervised learning
13. Probabilistic methods: fundamentals
14. Advanced probabilistic methods
15. Moving on: applications and their consequences

Authors

James Foulds Department of Information Systems, University of Maryland Baltimore County, Baltimore, MD, USA. Dr. James (Jimmy) Foulds is an assistant professor in the Department of Information Systems at the University of Maryland, Baltimore County. Previously, he was a postdoctoral scholar at the University of California, San Diego under the Data Science Postdoctoral Fellowship program, co-sponsored by ITA, Calit2, the Qualcomm Institute, CSE and ECE. Prior to that he was a postdoctoral scholar in Lise Getoor's LINQS research group at UCSC, and he graduated from Padhraic Smyth's DataLab group at UCI. Dr. Foulds' research interests are broadly in socially conscious machine learning and artificial intelligence. His work aims to improve AI's role in society regarding fairness and privacy, and to promote the practice of computational social science, using probabilistic models and Bayesian inference. Ian H. Witten Computer Science Department, University of Waikato, New Zealand. Ian H. Witten is a professor of computer science at the University of Waikato in New Zealand. He directs the New Zealand Digital Library research project. His research interests include information retrieval, machine learning, text compression, and programming by demonstration. He received an MA in Mathematics from Cambridge University, England; an MSc in Computer Science from the University of Calgary, Canada; and a PhD in Electrical Engineering from Essex University, England. He is a fellow of the ACM and of the Royal Society of New Zealand. He has published widely on digital libraries, machine learning, text compression, hypertext, speech synthesis and signal processing, and computer typography. Eibe Frank Computer Science Department, University of Waikato, New Zealand. Eibe Frank lives in New Zealand with his Samoan spouse and two lovely boys, but originally hails from Germany, where he received his first degree in computer science from the University of Karlsruhe. He moved to New Zealand to pursue his Ph.D. in machine learning under the supervision of Ian H. Witten and joined the Department of Computer Science at the University of Waikato as a lecturer on completion of his studies. He is now an associate professor at the same institution. As an early adopter of the Java programming language, he laid the groundwork for the Weka software described in this book. He has contributed a number of publications on machine learning and data mining to the literature and has refereed for many conferences and journals in these areas. Mark A. Hall Computer Science Department, University of Waikato, New Zealand. Mark A. Hall holds a bachelor's degree in computing and mathematical sciences and a Ph.D. in computer science, both from the University of Waikato. Throughout his time at Waikato, as a student and lecturer in computer science and more recently as a software developer and data mining consultant for Pentaho, an open-source business intelligence software company, Mark has been a core contributor to the Weka software described in this book. He has published several articles on machine learning and data mining and has refereed for conferences and journals in these areas. Christopher J. Pal Department of Computer Engineering and Software Engineering, Polytechnique Montr�al, Quebec, Canada. Christopher J. Pal is a Canada CIFAR AI Chair and a full professor at the Department of Computer Engineering and Software Engineering at Polytechnique Montr�al. Pal's research interests include computer vision and pattern recognition, computational photography, natural language processing, statistical machine learning and applications to human computer interaction.