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Learning Probabilistic Graphical Models in R

David Bellot

更新时间:2021-07-16 11:02:58

最新章节:Index
完结共60章
倒序

coverpage

Learning Probabilistic Graphical Models in R

Credits

About the Author

About the Reviewers

www.PacktPub.com

eBooks discount offers and more

Preface

What this book covers

What you need for this book

Who this book is for

Conventions

Reader feedback

Customer support

Chapter 1. Probabilistic Reasoning

Machine learning

Representing uncertainty with probabilities

Probabilistic graphical models

Summary

Chapter 2. Exact Inference

Building graphical models

Variable elimination

Sum-product and belief updates

The junction tree algorithm

Examples of probabilistic graphical models

Summary

Chapter 3. Learning Parameters

Introduction

Learning by inference

Maximum likelihood

Learning with hidden variables – the EM algorithm

Principles of the EM algorithm

Summary

Chapter 4. Bayesian Modeling – Basic Models

The Naive Bayes model

Beta-Binomial

The Gaussian mixture model

Summary

Chapter 5. Approximate Inference

Sampling from a distribution

Basic sampling algorithms

Rejection sampling

Importance sampling

Markov Chain Monte-Carlo

MCMC for probabilistic graphical models in R

Summary

Chapter 6. Bayesian Modeling – Linear Models

Linear regression

Bayesian linear models

Summary

Chapter 7. Probabilistic Mixture Models

Mixture models

EM for mixture models

Mixture of Bernoulli

Mixture of experts

Latent Dirichlet Allocation

Summary

Appendix A. Appendix

References

Index

更新时间:2021-07-16 11:02:58