Bayesian Networks

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A01=Jean-Baptiste Denis
A01=Marco Scutari
Author_Jean-Baptiste Denis
Author_Marco Scutari
Bayesian Networks
BIC Score
BN Learning
bnlearn
Category=PBTB
causal discovery techniques
causal networks
Conditional Gaussian
Conditional Independence Tests
Conditional Probability Table
Continuous Nodes
Cumulative Distribution Function
Dag Structure
DBN
Discrete BNs
Discrete Parents
dynamic probabilistic modelling in science
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
Expert Systems
expert systems applications
Gaussian Bayesian Network
Graphical Models
HMC.
Junction Tree
Likelihood Weighting
Machine Learning
Markov Blanket
MCMC Algorithm
MCMC Sample
Moral Graph
Posterior Distribution
Posterior Probability
probabilistic graphical models
Probabilistic Learning
R programming statistics
Stan Development Team
statistical inference methods
temporal data modelling
UK National Health Service
Von Mises Distribution

Product details

  • ISBN 9780367366513
  • Weight: 512g
  • Dimensions: 156 x 234mm
  • Publication Date: 29 Jul 2021
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Bayesian Networks: With Examples in R, Second Edition introduces Bayesian networks using a hands-on approach. Simple yet meaningful examples illustrate each step of the modelling process and discuss side by side the underlying theory and its application using R code. The examples start from the simplest notions and gradually increase in complexity. In particular, this new edition contains significant new material on topics from modern machine-learning practice: dynamic networks, networks with heterogeneous variables, and model validation.

The first three chapters explain the whole process of Bayesian network modelling, from structure learning to parameter learning to inference. These chapters cover discrete, Gaussian, and conditional Gaussian Bayesian networks. The following two chapters delve into dynamic networks (to model temporal data) and into networks including arbitrary random variables (using Stan). 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 packages and other software implementing Bayesian networks. The final chapter evaluates two real-world examples: a landmark causal protein-signalling network published in Science and a probabilistic graphical model for predicting the composition of different body parts.

Covering theoretical and practical aspects of Bayesian networks, this book provides you with an introductory overview of the field. It gives you a clear, practical understanding of the key points behind this modelling approach and, at the same time, it makes you familiar with the most relevant packages used to implement real-world analyses in R. The examples covered in the book span several application fields, data-driven models and expert systems, probabilistic and causal perspectives, thus giving you a starting point to work in a variety of scenarios.

Online supplementary materials include the data sets and the code used in the book, which will all be made available from https://www.bnlearn.com/book-crc-2ed/

Marco Scutari is a Senior Lecturer at Istituto Dalle Molle di Studisull'Intelligenza Artificiale (IDSIA), Switzerland. He has held positions in Statistics, Statistical Genetics and Machine Learning in the UK and Switzerland since completing his Ph.D. in Statistics in 2011. His research focuses on the theory of Bayesian networks and their applications to biological and clinical data, as well as statistical computing and software engineering.

Jean-Baptiste Denis was formerly appointed as a statistician and modeller at the "Mathematics and Applied Informatics from Genome to Environment" unit of the French National Research Institute for Agriculture, Food and Environment. His main research interests were the modelling of two-way tables and Bayesian approaches, especially applied to genotype-by-environment interactions and microbiological food safety.

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