Bayesian networks with examples in R (Record no. 982290)

MARC details
000 -LEADER
fixed length control field 08397nam a22002417a 4500
005 - DATE AND TIME OF LATEST TRANSACTION
control field 20240718110531.0
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION
fixed length control field 230127b ||||| |||| 00| 0 eng d
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
International Standard Book Number 9780367366513
082 ## - DEWEY DECIMAL CLASSIFICATION NUMBER
Classification number 519.542
Item number SCU
100 ## - MAIN ENTRY--PERSONAL NAME
Personal name Scutari, Marco
9 (RLIN) 10645
245 ## - TITLE STATEMENT
Title Bayesian networks with examples in R
250 ## - EDITION STATEMENT
Edition statement 2nd
260 ## - PUBLICATION, DISTRIBUTION, ETC.
Name of publisher, distributor, etc. CRC Press
Place of publication, distribution, etc. London
Date of publication, distribution, etc. 2022
300 ## - PHYSICAL DESCRIPTION
Extent xv, 258 p.
365 ## - TRADE PRICE
Price type code GBP
Price amount 74.99
504 ## - BIBLIOGRAPHY, ETC. NOTE
Bibliography, etc. note Table of Contents Preface to the Second Edition Preface to the First Edition 1. The Discrete Case: Multinomial Bayesian Networks Introductory Example: Train Use Survey Graphical Representation Probabilistic Representation Estimating the Parameters: Conditional Probability Tables Learning the DAG Structure: Tests and Scores Conditional Independence Tests Network Scores Using Discrete Bayesian Networks Using the DAG Structure Using the Conditional Probability Tables Exact Inference Approximate Inference Plotting Discrete Bayesian Networks Plotting DAGs Plotting Conditional Probability Distributions Further Reading 2. The Continuous Case: Gaussian Bayesian Networks Introductory Example: Crop Analysis Graphical Representation Probabilistic Representation Estimating the Parameters: Correlation Coefficients Learning the DAG Structure: Tests and Scores Conditional Independence Tests Network Scores Using Gaussian Bayesian Networks Exact Inference Approximate Inference Plotting Gaussian Bayesian Networks Plotting DAGs Plotting Conditional Probability Distributions More Properties Further Reading 3. The Mixed Case: Conditional Gaussian Bayesian Networks Introductory Example: Healthcare Costs Graphical and Probabilistic Representation Estimating the Parameters: Mixtures of Regressions Learning the DAG Structure: Tests and Scores Using Conditional Gaussian Bayesian Networks Further Reading 4. Time Series: Dynamic Bayesian Networks Introductory Example: Domotics Graphical Representation Probabilistic Representation Learning a Dynamic Bayesian Network Using Dynamic Bayesian Networks Plotting Dynamic Bayesian Networks Further Reading 5. More Complex Cases: General Bayesian Networks Introductory Example: A&E Waiting Times Graphical and Probabilistic Representation Building the Model in Stan Generating Data Exploring the Variables Estimating the Parameters in Stan Further Reading 6. Theory and Algorithms for Bayesian Networks Conditional Independence and Graphical Separation Bayesian Networks Markov Blankets Moral Graphs Bayesian Network Learning Structure Learning Constraint-based Algorithms Score-based Algorithms Hybrid Algorithms Parameter Learning Bayesian Network Inference Probabilistic Reasoning and Evidence Algorithms for Belief Updating Exact Inference Algorithms Approximate Inference Algorithms Causal Bayesian Networks Evaluating a Bayesian Network Further Reading 7. Software for Bayesian Networks An Overview of R Packages The deal Package The catnet Package The pcalg Package The abn Package Stan and BUGS Software Packages Stan: a Feature Overview Inference Based on MCMC Sampling Other Software Packages BayesiaLab Hugin GeNIe 8. Real-World Applications of Bayesian Networks Learning Protein-Signalling Networks A Gaussian Bayesian Network Discretising Gene Expressions Model Averaging Choosing the Significance Threshold Handling Interventional Data Querying the Network Predicting the Body Composition Aim of the Study Designing the Predictive Approach Assessing the Quality of a Predictor The Saturated BN Convenient BNs Looking for Candidate BNs Further Reading A Graph Theory A Graphs, Nodes and Arcs A The Structure of a Graph A Further Reading B Probability Distributions B General Features B Marginal and Conditional Distributions B Discrete Distributions B Binomial Distribution B Multinomial Distribution B Other Common Distributions B Bernoulli Distribution B Poisson Distribution B Continuous Distributions B Normal Distribution B Multivariate Normal Distribution B Other Common Distributions B Chi-square Distribution B Student's t Distribution B Beta Distribution B Dirichlet Distribution B Conjugate Distributions B Further Reading C A Note about Bayesian Networks C Bayesian Networks and Bayesian Statistics
520 ## - SUMMARY, ETC.
Summary, etc. 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.
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Bayesian statistical decision theory
9 (RLIN) 1505
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element R (Computer program language)
9 (RLIN) 1512
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Bayesian statistical decision theory--Data processing
9 (RLIN) 11628
700 ## - ADDED ENTRY--PERSONAL NAME
Personal name Denis, Jean-Baptiste
9 (RLIN) 11629
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Source of classification or shelving scheme Dewey Decimal Classification
Koha item type Book
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Withdrawn status Lost status Source of classification or shelving scheme Damaged status Not for loan Collection code Home library Current library Shelving location Date acquired Source of acquisition Cost, normal purchase price Total Checkouts Full call number Barcode Date last seen Date last checked out Copy number Cost, replacement price Price effective from Koha item type
    Dewey Decimal Classification       Bodh Gaya Bodh Gaya General Stacks 27/01/2023 Overseas Press India Private 4935.52 1 519.542 SCU IIMG-004364 13/10/2023 16/08/2023 1 7506.50 27/01/2023 Book

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