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โœฆ   LIBER   โœฆ

๐Ÿ“

Deep Learning (Adaptive Computation and Machine Learning Series)

โœ Scribed by Ian Goodfellow, Yoshua Bengio, Aaron Courville, Francis Bach


Publisher
MIT Press
Year
2017
Tongue
English
Leaves
800
Category
Library

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โœฆ Table of Contents


Table of Contents
Website
Acknowledgements
Notation
1 Introduction
PART I: Applied Math and Machine Learning Basics
2 Linear Algebra
3 Probability and Information Theory
4 Numerical Computation
5 Machine Learning Basics
PART II: Deep Networks: Modern Practices
6 Deep Feedforward Networks
7 Regularization for Deep Learning
8 Optimization for Training Deep Models
9 Convolutional Networks
10 Sequence Modeling: Recurrent and Recursive Nets
11 Practical Methodology
12 Applications
PART III: Deep Learning Research
13 Linear Factor Models
14 Autoencoders
15 Representation Learning
16 Structured Probabilistic Models for Deep Learning
17 Monte Carlo Methods
18 Confronting the Partition Function
19 Approximate Inference
20 Deep Generative Models
Bibliography
Index


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