Introduction to Statistical Machine Learning
Elsevier (Publisher)
2nd Edition
Will be published approx. on 1. June 2027
Book
Paperback/Softback
650 pages
978-0-443-30032-5 (ISBN)
Description
Introduction to Statistical Machine Learning, Second Edition provides a general introduction to the fundamental concepts of statistics and probability that are used in describing machine learning algorithms, covering the two major approaches of machine learning techniques, generative methods and discriminative methods. In addition, it explores advanced topics that play essential roles in making machine learning algorithms more useful in practice, including creating full-fledged algorithms in a range of real-world applications drawn from research areas such as image processing, speech processing, natural language processing, robot control, as well as biology, medicine, astronomy, physics, and materials.
The algorithms developed in the book include Python program code to provide readers with the necessary, practical skills needed to accomplish a wide range of data analysis tasks. The new edition also includes an all-new section on Deep Learning, including chapters on Feedforward Neural Networks, Neural Networks with Image Data, Neural Networks with Sequential Data, learning from limited data, Representation Learning, Deep Generative Modeling, and Multimodal Learning.
The algorithms developed in the book include Python program code to provide readers with the necessary, practical skills needed to accomplish a wide range of data analysis tasks. The new edition also includes an all-new section on Deep Learning, including chapters on Feedforward Neural Networks, Neural Networks with Image Data, Neural Networks with Sequential Data, learning from limited data, Representation Learning, Deep Generative Modeling, and Multimodal Learning.
More details
Edition
2nd edition
Language
English
Place of publication
United States
Product notice
Paperback (trade)
Unsewn / adhesive bound
Dimensions
Height: 235 mm
Width: 191 mm
Weight
449 gr
ISBN-13
978-0-443-30032-5 (9780443300325)
Schweitzer Classification
Other editions
Previous edition

Masashi Sugiyama
Introduction to Statistical Machine Learning
Book
09/2015
Morgan Kaufmann
€126.27
Shipment within 15-20 days
Persons
Masashi Sugiyama received the degrees of Bachelor of Engineering, Master of Engineering, and Doctor of Engineering in Computer Science from Tokyo Institute of Technology, Japan in 1997, 1999, and 2001, respectively. In 2001, he was appointed Assistant Professor in the same institute, and he was promoted to Associate Professor in 2003. He moved to the University of Tokyo as Professor in 2014. He received an Alexander von Humboldt Foundation Research Fellowship and researched at Fraunhofer Institute, Berlin, Germany, from 2003 to 2004. In 2006, he received a European Commission Program Erasmus Mundus Scholarship and researched at the University of Edinburgh, Edinburgh, UK. He received the Faculty Award from IBM in 2007 for his contribution to machine learning under non-stationarity, the Nagao Special Researcher Award from the Information Processing Society of Japan in 2011 and the Young Scientists' Prize from the Commendation for Science and Technology by the Minister of Education, Culture, Sports, Science and Technology Japan for his contribution to the density-ratio paradigm of machine learning. His research interests include theories and algorithms of machine learning and data mining, and a wide range of applications such as signal processing, image processing, and robot control.
Content
Part 1. Introduction
1. Statistical Machine Learning
Part 2. Statistics and Probability
2. Random Variables and Probability Distributions
3. Examples of Discrete Probability Distributions
4. Examples of Continuous Probability Distributions
5. Multidimensional Probability Distributions
6. Examples of Multidimensional Probability Distributions
7. Sum of Independent Random Variables
8. Probability Inequalities
9. Statistical Estimation
10. Hypothesis Testing
Part 3. Generative Approach to Statistical Pattern Recognition
11. Pattern Recognition via Generative Model Estimation
12. Maximum Likelihood Estimation
13. Properties of Maximum Likelihood Estimation
14. Model Selection for Maximum Likelihood Estimation
15. Maximum Likelihood Estimation for Gaussian Mixture Models
16. Nonparametric Estimation
17. Bayesian Inference
18. Analytic Approximation of Marginal Likelihood
19. Numerical Approximation of Predictive Distribution
20. Bayesian Mixture Models
Part 4. Discriminative Approach to Statistical Machine Learning
21. Learning Models
22. Least Squares Regression
23. Constrained Least Squares Regression
24. Sparse Regression
25. Robust Regression
26. Least Squares Classification
27. Support Vector Classification
28. Probabilistic Classification
29. Structured Classification
Part 5. Further Topics
30. Ensemble Learning
31. Online Learning
32. Confidence of Prediction
33. Weakly Supervised Learning
34. Transfer Learning
35. Multitask Learning
36. Linear Dimensionality Reduction
37. Nonlinear Dimensionality Reduction
38. Clustering
39. Outlier Detection
40. Change Detection
Part 6. Deep Learning
41. Feedforward Neural Networks
42. Neural Networks with Image Data
43. Neural Networks with Sequential Data
44. Learning from Limited Data
45. Representation Learning
46. Deep Generative Modelling
47. Multimodal Learning
1. Statistical Machine Learning
Part 2. Statistics and Probability
2. Random Variables and Probability Distributions
3. Examples of Discrete Probability Distributions
4. Examples of Continuous Probability Distributions
5. Multidimensional Probability Distributions
6. Examples of Multidimensional Probability Distributions
7. Sum of Independent Random Variables
8. Probability Inequalities
9. Statistical Estimation
10. Hypothesis Testing
Part 3. Generative Approach to Statistical Pattern Recognition
11. Pattern Recognition via Generative Model Estimation
12. Maximum Likelihood Estimation
13. Properties of Maximum Likelihood Estimation
14. Model Selection for Maximum Likelihood Estimation
15. Maximum Likelihood Estimation for Gaussian Mixture Models
16. Nonparametric Estimation
17. Bayesian Inference
18. Analytic Approximation of Marginal Likelihood
19. Numerical Approximation of Predictive Distribution
20. Bayesian Mixture Models
Part 4. Discriminative Approach to Statistical Machine Learning
21. Learning Models
22. Least Squares Regression
23. Constrained Least Squares Regression
24. Sparse Regression
25. Robust Regression
26. Least Squares Classification
27. Support Vector Classification
28. Probabilistic Classification
29. Structured Classification
Part 5. Further Topics
30. Ensemble Learning
31. Online Learning
32. Confidence of Prediction
33. Weakly Supervised Learning
34. Transfer Learning
35. Multitask Learning
36. Linear Dimensionality Reduction
37. Nonlinear Dimensionality Reduction
38. Clustering
39. Outlier Detection
40. Change Detection
Part 6. Deep Learning
41. Feedforward Neural Networks
42. Neural Networks with Image Data
43. Neural Networks with Sequential Data
44. Learning from Limited Data
45. Representation Learning
46. Deep Generative Modelling
47. Multimodal Learning