Tree-Based Methods for Statistical Learning in R Tree-Based Methods for Statistical Learning in R
Chapman & Hall/CRC Data Science Series

Tree-Based Methods for Statistical Learning in R

    • ¥9,800
    • ¥9,800

発行者による作品情報

Tree-based Methods for Statistical Learning in R provides a thorough introduction to both individual decision tree algorithms (Part I) and ensembles thereof (Part II). Part I of the book brings several different tree algorithms into focus, both conventional and contemporary. Building a strong foundation for how individual decision trees work will help readers better understand tree-based ensembles at a deeper level, which lie at the cutting edge of modern statistical and machine learning methodology.

The book follows up most ideas and mathematical concepts with code-based examples in the R statistical language; with an emphasis on using as few external packages as possible. For example, users will be exposed to writing their own random forest and gradient tree boosting functions using simple for loops and basic tree fitting software (like rpart and party/partykit), and more. The core chapters also end with a detailed section on relevant software in both R and other opensource alternatives (e.g., Python, Spark, and Julia), and example usage on real data sets. While the book mostly uses R, it is meant to be equally accessible and useful to non-R programmers.

Consumers of this book will have gained a solid foundation (and appreciation) for tree-based methods and how they can be used to solve practical problems and challenges data scientists often face in applied work.

Features:

Thorough coverage, from the ground up, of tree-based methods (e.g., CART, conditional inference trees, bagging, boosting, and random forests).
A companion website containing additional supplementary material and the code to reproduce every example and figure in the book. A companion R package, called treemisc, which contains several data sets and functions used throughout the book (e.g., there’s an implementation of gradient tree boosting with LAD loss that shows how to perform the line search step by updating the terminal node estimates of a fitted rpart tree). Interesting examples that are of practical use; for example, how to construct partial dependence plots from a fitted model in Spark MLlib (using only Spark operations), or post-processing tree ensembles via the LASSO to reduce the number of trees while maintaining, or even improving performance.

ジャンル
ビジネス/マネー
発売日
2022年
6月23日
言語
EN
英語
ページ数
404
ページ
発行者
CRC Press
販売元
Taylor & Francis Group
サイズ
35.4
MB
Mathematical Engineering of Deep Learning Mathematical Engineering of Deep Learning
2024年
Explanatory Model Analysis Explanatory Model Analysis
2021年
Predictive Modelling for Football Analytics Predictive Modelling for Football Analytics
2025年
Models Demystified Models Demystified
2025年
Data Science Data Science
2024年
Why Data Science Projects Fail Why Data Science Projects Fail
2024年