9781482225587-1482225581-Bayesian Networks: With Examples in R (Chapman & Hall/CRC Texts in Statistical Science)

Bayesian Networks: With Examples in R (Chapman & Hall/CRC Texts in Statistical Science)

ISBN-13: 9781482225587
ISBN-10: 1482225581
Edition: 1
Author: Marco Scutari, Jean-Baptiste Denis
Publication date: 2014
Publisher: Chapman and Hall/CRC
Format: Hardcover 241 pages
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Book details

ISBN-13: 9781482225587
ISBN-10: 1482225581
Edition: 1
Author: Marco Scutari, Jean-Baptiste Denis
Publication date: 2014
Publisher: Chapman and Hall/CRC
Format: Hardcover 241 pages

Summary

Bayesian Networks: With Examples in R (Chapman & Hall/CRC Texts in Statistical Science) (ISBN-13: 9781482225587 and ISBN-10: 1482225581), written by authors Marco Scutari, Jean-Baptiste Denis, was published by Chapman and Hall/CRC in 2014. With an overall rating of 3.9 stars, it's a notable title among other AI & Machine Learning (Biology, Biological Sciences, Computer Science) books. You can easily purchase or rent Bayesian Networks: With Examples in R (Chapman & Hall/CRC Texts in Statistical Science) (Hardcover) from BooksRun, along with many other new and used AI & Machine Learning books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $4.03.

Description

Understand the Foundations of Bayesian Networks―Core Properties and Definitions Explained

Bayesian Networks: With Examples in R introduces Bayesian networks using a hands-on approach. Simple yet meaningful examples in R illustrate each step of the modeling process. The examples start from the simplest notions and gradually increase in complexity. The authors also distinguish the probabilistic models from their estimation with data sets.

The first three chapters explain the whole process of Bayesian network modeling, from structure learning to parameter learning to inference. These chapters cover discrete Bayesian, Gaussian Bayesian, and hybrid networks, including arbitrary random variables.

The book then gives a concise but rigorous treatment of the fundamentals of Bayesian networks and offers an introduction to causal Bayesian networks. It also presents an overview of R and other software packages appropriate for Bayesian networks. The final chapter evaluates two real-world examples: a landmark causal protein signaling network paper and graphical modeling approaches for predicting the composition of different body parts.

Suitable for graduate students and non-statisticians, this text provides an introductory overview of Bayesian networks. It gives readers a clear, practical understanding of the general approach and steps involved.

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