May 2023
Intermediate to advanced
352 pages
11h 19m
English
This part of the book will introduce several “essential” ensemble methods. In each chapter you’ll learn how to (1) implement a basic version of an ensemble method from scratch to gain an under-the-hood understanding; (2) visualize, step-by-step, how learning actually takes place; and (3) use sophisticated, off-the-shelf implementations to ultimately get the best out of your models.
Chapters 2 and 3 cover different types of well-known parallel ensemble methods, including bagging, random forests, stacking, and their variants. Chapter 4 introduces a fundamental sequential ensembling technique called boosting, as well as another well-known ensemble method called AdaBoost (and its variants).
Chapters 5 and 6 are all ...
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