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This textbook considers statistical learning applications when interest centers on the conditional distribution of a response variable, given a set of predictors, and in the absence of a credible model that can be specified before the data analysis begins. Consistent with modern data analytics, it emphasizes that a proper statistical learning data analysis depends in an integrated fashion on sound data collection, intelligent data management, appropriate statistical procedures, and an accessible interpretation of results. The unifying theme is that supervised learning properly can be seen as a form of regression analysis. Key concepts and procedures are illustrated with a large number of real applications and their associated code in R, with an eye toward practical implications. The growing integration of computer science and statistics is well represented including the occasional, but salient, tensions that result. Throughout, there are links to the big picture.
The third edition considers significant advances in recent years, among which are:
Provides accompanying, fully updated R code Evaluates the ethical and political implications of the application of algorithmic methods Features a new chapter on deep learning
Auteur
Richard Berk is Distinguished Professor of Statistics Emeritus at UCLA and currently a Professor at the University of Pennsylvania in the Department of Statistics and in the Department of Criminology. He is an elected fellow of the American Statistical Association and the American Association for the Advancement of Science and has served in a professional capacity with a number of organizations such as the Committee on Applied and Theoretical Statistics for the National Research Council and the Board of Directors of the Social Science Research Council. His research has ranged across a variety of statistical applications in the social and natural sciences.
Résumé
"It could readily be a textbook for an applications-focused course at the graduate level as each chapter comes with exercises ... . Examples with accompanying code also appear throughout the chapters which provide a scaffold for getting started ... . Berk's pragmatic advice will serve a wide audience from practitioners to educators to students." (Sara Stoudt, MAA Reviews, December 12, 2021)
Contenu
Preface.- Preface To Second Edition.- Preface To Third Edition.- 1 Statistical Learning as a Regression Problem.- 2 Splines, Smoothers, and Kernels.- 3 Classification and Regression Trees (CART).- 4 Bagging.- 5 Random Forests.- 6 Boosting.- 7 Support Vector Machines.- 8 Neural Networks.- 9 Reinforcement Learning and Genetic Algorithms.- 10 Integration Themes and a Bit of Craft Lore.- Index.