Learning With Kernels: Support Vector Machines, Regularization, Optimization, And Beyond

Learning With Kernels: Support Vector Machines, Regularization, Optimization, And Beyond

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Jun 5, 2018 · 英語 · ペーパーバック (644 ページ)
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本の詳細

形式 ペーパーバック
ページ数 644
言語 英語
公開されました Jun 5, 2018
出版社 MIT Press
Reprint
ISBN-10 0262536579
ISBN-13 9780262536578

説明

In the realm of machine learning, the exploration of kernels has become a pivotal topic that bridges theoretical understanding and practical application. Bernhard Schölkopf and Alexander J. Smola delve into the intricacies of Support Vector Machines (SVM), illustrating how these powerful tools can effectively navigate complex datasets. Their work unpacks the mathematical foundations that underpin kernel methods and emphasizes their significance in regularizing and optimizing models for enhanced performance.

The authors provide a comprehensive overview of techniques that allow learners to harness the potential of high-dimensional data spaces. By presenting a blend of theory and real-world applications, they guide readers through the nuances of optimization strategies, ensuring that even those new to the subject can grasp its core principles. The exposition is both accessible and informative, catering to a wide range of readers, from students to seasoned practitioners in the field.

As the discussion progresses, the text reveals the limitless possibilities that arise from mastering these advanced computational techniques. A focus on adaptability highlights how kernels can be employed beyond traditional machine learning boundaries, inspiring innovation and further exploration in the rapidly evolving landscape of artificial intelligence and data science.

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科学&技術
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