Graphical models in applied multivariate statistics
Author(s)
Bibliographic Information
Graphical models in applied multivariate statistics
(Wiley series in probability and mathematical statistics, . Probability and mathematical statistics)
John Wiley & Sons, c1990
Available at 70 libraries
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Note
Bibliography: p. 426-435
Includes indexes
Description and Table of Contents
Description
Graphical models--a subset of log-linear models--reveal the interrelationships between multiple variables and features of the underlying conditional independence. Following the theorem-proof-remarks format, this introduction to the use of graphical models in the description and modeling of multivariate systems covers conditional independence, several types of independence graphs, Gaussian models, issues in model selection, regression and decomposition. Many numerical examples and exercises with solutions are included.
Table of Contents
Independence and Interaction.
Independence Graphs.
Information Divergence.
The Inverse Variance.
Graphical Gaussian Models.
Graphical Log-Linear Models.
Model Selection.
Methods for Sparse Tables.
Regression and Graphical Chain Models.
Models for Mixed Variables.
Decompositions and Decomposability.
Appendices.
References.
Author Index.
Subject Index.
by "Nielsen BookData"