Description

Book Synopsis
Many machine learning problems are too complex to be resolved by a single model or algorithm. Ensemble machine learning trains a group of diverse machine learning models to work together to solve a problem. By aggregating their output, these ensemble models can flexibly deliver rich and accurate results. Ensemble Methods for Machine Learning is a guide to ensemble methods with proven records in data science competitions and real world applications. Learning from hands-on case studies, you'll develop an under-the-hood understanding of foundational ensemble learning algorithms to deliver accurate, performant models.
About the Technology Ensemble machine learning lets you make robust predictions without needing the huge datasets and processing power demanded by deep learning. It sets multiple models to work on solving a problem, combining their results for better performance than a single model working alone. This "wisdom of crowds" approach distils information from several models into a set of highly accurate results.

Trade Review
"The definitive and complete guide on ensemble learning. A must read!" Al Krinker
"The examples are clear and easy to reproduce, the writing is engaging and clear, and the reader is not bogged down by details which might be unimportant for beginners in the field!" Or Golan
"This book is a great tutorial on ensemble methods!" Stephen Warnett
"The code examples as well as the case studies at the end of each chapter open many possibilities of using these techniques on your data/projects." Joaquin Beltran

Ensemble Methods for Machine Learning

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£41.39

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RRP £45.99 – you save £4.60 (10%)

Order before 4pm tomorrow for delivery by Tue 20 Jan 2026.

A Paperback / softback by Gautam Kunapuli

1 in stock


    View other formats and editions of Ensemble Methods for Machine Learning by Gautam Kunapuli

    Publisher: Manning Publications
    Publication Date: 09/06/2023
    ISBN13: 9781617297137, 978-1617297137
    ISBN10: 1617297135

    Description

    Book Synopsis
    Many machine learning problems are too complex to be resolved by a single model or algorithm. Ensemble machine learning trains a group of diverse machine learning models to work together to solve a problem. By aggregating their output, these ensemble models can flexibly deliver rich and accurate results. Ensemble Methods for Machine Learning is a guide to ensemble methods with proven records in data science competitions and real world applications. Learning from hands-on case studies, you'll develop an under-the-hood understanding of foundational ensemble learning algorithms to deliver accurate, performant models.
    About the Technology Ensemble machine learning lets you make robust predictions without needing the huge datasets and processing power demanded by deep learning. It sets multiple models to work on solving a problem, combining their results for better performance than a single model working alone. This "wisdom of crowds" approach distils information from several models into a set of highly accurate results.

    Trade Review
    "The definitive and complete guide on ensemble learning. A must read!" Al Krinker
    "The examples are clear and easy to reproduce, the writing is engaging and clear, and the reader is not bogged down by details which might be unimportant for beginners in the field!" Or Golan
    "This book is a great tutorial on ensemble methods!" Stephen Warnett
    "The code examples as well as the case studies at the end of each chapter open many possibilities of using these techniques on your data/projects." Joaquin Beltran

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