Ensemble Methods

£47.99

Ensemble Methods

Foundations and Algorithms

Probability and statistics Automatic control engineering Data mining Computer architecture and logic design Artificial intelligence

Author: Zhi-Hua Zhou

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Collection: Chapman & Hall/CRC Machine Learning & Pattern Recognition

Language: English

Published by: Chapman and Hall/CRC

Published on: 15th February 2025

Format: LCP-protected ePub

ISBN: 9781040307663


Ensemble Methods and Their Success

Ensemble methods that train multiple learners and then combine them to use, with Boosting and Bagging as representatives, are well-known machine learning approaches. It has become common sense that an ensemble is usually significantly more accurate than a single learner, and ensemble methods have already achieved great success in various real-world tasks.

Historical Context and Advances

Twelve years have passed since the publication of the first edition of the book in 2012 (Japanese and Chinese versions published in 2017 and 2020, respectively). Many significant advances in this field have been developed. First, many theoretical issues have been tackled, for example, the fundamental question of why AdaBoost seems resistant to overfitting gets addressed, so that now we understand much more about the essence of ensemble methods. Second, ensemble methods have been well developed in more machine learning fields, e.g., isolation forest in anomaly detection, so that now we have powerful ensemble methods for tasks beyond conventional supervised learning.

Emerging Areas and the New Edition

Third, ensemble mechanisms have also been found helpful in emerging areas such as deep learning and online learning. This edition expands on the previous one with additional content to reflect the significant advances in the field, and is written in a concise but comprehensive style to be approachable to readers new to the subject.

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