Description
Product ID: | 9781316519332 |
Product Form: | Hardback |
Country of Manufacture: | GB |
Title: | The Principles of Deep Learning Theory |
Subtitle: | An Effective Theory Approach to Understanding Neural Networks |
Authors: | Author: Daniel A. Roberts, Sho Yaida |
Page Count: | 472 |
Subjects: | Statistical physics, Statistical physics, Mathematical physics, Artificial intelligence, Machine learning, Mathematical physics, Artificial intelligence, Machine learning |
Description: | This is the first book focused entirely on deep learning theory. Tools from theoretical physics are borrowed and adapted to explain, from first principles, how realistic deep neural networks work, benefiting practitioners looking to build better AI models and theorists looking for a unifying framework for understanding intelligence. This textbook establishes a theoretical framework for understanding deep learning models of practical relevance. With an approach that borrows from theoretical physics, Roberts and Yaida provide clear and pedagogical explanations of how realistic deep neural networks actually work. To make results from the theoretical forefront accessible, the authors eschew the subject''s traditional emphasis on intimidating formality without sacrificing accuracy. Straightforward and approachable, this volume balances detailed first-principle derivations of novel results with insight and intuition for theorists and practitioners alike. This self-contained textbook is ideal for students and researchers interested in artificial intelligence with minimal prerequisites of linear algebra, calculus, and informal probability theory, and it can easily fill a semester-long course on deep learning theory. For the first time, the exciting practical advances in modern artificial intelligence capabilities can be matched with a set of effective principles, providing a timeless blueprint for theoretical research in deep learning. |
Imprint Name: | Cambridge University Press |
Publisher Name: | Cambridge University Press |
Country of Publication: | GB |
Publishing Date: | 2022-05-26 |