Geometry of Deep Learning: A Signal Processing Perspective: 37 (Mathematics in Industry, 37) Hardback - 2022
by Ye, Jong Chul
- New
- Hardback
Standard delivery: 7 to 14 days
Details
- Title Geometry of Deep Learning: A Signal Processing Perspective: 37 (Mathematics in Industry, 37)
- Author Ye, Jong Chul
- Binding Hardback
- Condition New
- Pages 330
- Volumes 1
- Language ENG
- Publisher Springer
- Publication date 2022
- Illustrated Yes
- Features Illustrated
- Bookseller's Inventory # x-981166045X
- ISBN 9789811660450 / 981166045X
- Weight 1.46 lbs (0.66 kg)
- Dimensions 9.21 x 6.14 x 0.81 in (23.39 x 15.60 x 2.06 cm)
- Category Mathematics
- Quantity available 2
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From the publisher
From the rear cover
To support this claim, an overview of classical kernel machine learning approaches is presented, and their advantages and limitations are explained. Following a detailed explanation of the basic building blocks of deep neural networks from a biological and algorithmic point of view, the latest tools such as attention, normalization, Transformer, BERT, GPT-3, and others are described. Here, too, the focus is on the fact that in these heuristic approaches, there is an important, beautiful geometric structure behind the intuition that enables a systematic understanding. A unified geometric analysis to understand the working mechanism of deep learning from high-dimensional geometry is offered. Then, different forms of generative models like GAN, VAE, normalizing flows, optimal transport, and so on are described from a unified geometric perspective, showing that they actually come from statistical distance-minimization problems.
Because this book contains up-to-date information from both a practical and theoretical point of view, it can be used as an advanced deep learning textbook in universities or as a reference source for researchers interested in acquiring the latest deep learning algorithms and their underlying principles. In addition, the book has been prepared for a codeshare course for both engineering and mathematics students, thus much of the content is interdisciplinary and will appeal to students from both disciplines.