Foundations of Machine Learning / Mehryar Mohri, Afshin Rostamizadeh & Ameet Talwalkar
Series: Adaptive Computation and Machine LearningPublication details: MIT Press : London , ©2018.Edition: 2nd edDescription: xv, 486pISBN:- 9780262039406
- 006.3Â MohF
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Indian Institute of Technology Tirupati General Stacks | Mathematics | 006.3 MohF (12192) (Browse shelf(Opens below)) | Available | 12192 |
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| 005.133 STR/D The Design and Evolution of C++ | 005.73 WEI Data Structures and Algorithm Analysis In C++ [3rd ed.] / | 005.73 WEI Data Structures and Algorithm Analysis In C++ [3rd ed.] / | 006.3 MohF (12192) Foundations of Machine Learning / | 006.3 RUS/A Artifical Intelligence : A Modern Approach / | 006.31 HAS/E The Elements of Statistical Learning: Data Mining, Inference, and Prediction | 006.31 HAS/E The Elements of Statistical Learning: Data Mining, Inference, and Prediction |
This book is a general introduction to machine learning that can serve as a textbook for graduate students and a reference for researchers. It covers fundamental modern topics in machine learning while providing the theoretical basis and conceptual tools needed for the discussion and justification of algorithms. It also describes several key aspects of the application of these algorithms. The authors aim to present novel theoretical tools and concepts while giving concise proofs even for relatively advanced topics. Foundations of Machine Learning is unique in its focus on the analysis and theory of algorithms. The first four chapters lay the theoretical foundation for what follows; subsequent chapters are mostly self-contained. Topics covered include the Probably Approximately Correct (PAC) learning framework; generalization bounds based on Rademacher complexity and VC-dimension; Support Vector Machines (SVMs); kernel methods; boosting; on-line learning; multi-class classification; ranking; regression; algorithmic stability; dimensionality reduction; learning automata and languages; and reinforcement learning. Each chapter ends with a set of exercises. Appendixes provide additional material including concise probability review.This second edition offers three new chapters, on model selection, maximum entropy models, and conditional entropy models. New material in the appendixes includes a major section on Fenchel duality, expanded coverage of concentration inequalities, and an entirely new entry on information theory. More than half of the exercises are new to this edition
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