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Random Matrix Methods for Machine Learning

Specificaties
Gebonden, 408 blz. | Engels
Cambridge University Press | e druk, 2022
ISBN13: 9781009123235
Rubricering
Cambridge University Press e druk, 2022 9781009123235
€ 93,74
Levertijd ongeveer 8 werkdagen

Samenvatting

This book presents a unified theory of random matrices for applications in machine learning, offering a large-dimensional data vision that exploits concentration and universality phenomena. This enables a precise understanding, and possible improvements, of the core mechanisms at play in real-world machine learning algorithms. The book opens with a thorough introduction to the theoretical basics of random matrices, which serves as a support to a wide scope of applications ranging from SVMs, through semi-supervised learning, unsupervised spectral clustering, and graph methods, to neural networks and deep learning. For each application, the authors discuss small- versus large-dimensional intuitions of the problem, followed by a systematic random matrix analysis of the resulting performance and possible improvements. All concepts, applications, and variations are illustrated numerically on synthetic as well as real-world data, with MATLAB and Python code provided on the accompanying website.

Specificaties

ISBN13:9781009123235
Taal:Engels
Bindwijze:Gebonden
Aantal pagina's:408

Inhoudsopgave

Preface; 1. Introduction; 2. Random matrix theory; 3. Statistical inference in Linear Models; 4. Kernel methods; 5. Large neural networks; 6. Large dimensional convex optimization; 7. Community detection on graphs; 8. Universality and real data; Bibliography; Index.
€ 93,74
Levertijd ongeveer 8 werkdagen

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        Random Matrix Methods for Machine Learning