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Model-Based Clustering and Classification for Data Science: With Applications in R

✍ Scribed by Charles Bouveyron, Gilles Celeux, T. Brendan Murphy, Adrian E. Raftery


Publisher
Cambridge University Press
Year
2019
Tongue
English
Leaves
447
Series
Cambridge Series in Statistical and Probabilistic Mathematics
Category
Library

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✦ Synopsis


Cluster analysis finds groups in data automatically. Most methods have been heuristic and leave open such central questions as: how many clusters are there? Which method should I use? How should I handle outliers? Classification assigns new observations to groups given previously classified observations, and also has open questions about parameter tuning, robustness and uncertainty assessment. This book frames cluster analysis and classification in terms of statistical models, thus yielding principled estimation, testing and prediction methods, and sound answers to the central questions. It builds the basic ideas in an accessible but rigorous way, with extensive data examples and R code; describes modern approaches to high-dimensional data and networks; and explains such recent advances as Bayesian regularization, non-Gaussian model-based clustering, cluster merging, variable selection, semi-supervised and robust classification, clustering of functional data, text and images, and co-clustering. Written for advanced undergraduates in data science, as well as researchers and practitioners, it assumes basic knowledge of multivariate calculus, linear algebra, probability and statistics.

✦ Table of Contents


Cover
Front Matter
CAMBRIDGE SERIES IN STATISTICAL AND
PROBABILISTIC MATHEMATICS
Model-Based Clustering and Classification for Data Science:
With Applications in R
Copyright
Dedication
Contents
Expanded Contents
Preface
Acknowledgements
1 Introduction
2 Model-based Clustering: Basic Ideas
3 Dealing with Difficulties
4 Model-based Classification
5 Semi-supervised Clustering and
Classification
6 Discrete Data Clustering
7 Variable Selection
8 High-dimensional Data
9 Non-Gaussian Model-based Clustering
10 Network Data
11 Model-based Clustering with Covariates
12 Other Topics
List of R Packages
Bibliography
Author Index
Subject Index


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