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عنوان
Model-based clustering and classification for data science :

پدید آورنده
Charles Bouveyron, Gilles Celeux, T. Brendan Murphy, Adrian E. Raftery.

موضوع
Cluster analysis.,Mathematical statistics.,R (Computer program language),Statistics-- Classification.,Cluster analysis.,Mathematical statistics.,R (Computer program language),Statistics.

رده
QA278
.
55
.
M63
2019

کتابخانه
Center and Library of Islamic Studies in European Languages

محل استقرار
استان: Qom ـ شهر: Qom

Center and Library of Islamic Studies in European Languages

تماس با کتابخانه : 32910706-025

INTERNATIONAL STANDARD BOOK NUMBER

(Number (ISBN
110864418X
(Number (ISBN
9781108644181
Erroneous ISBN
110849420X
Erroneous ISBN
9781108494205

TITLE AND STATEMENT OF RESPONSIBILITY

Title Proper
Model-based clustering and classification for data science :
General Material Designation
[Book]
Other Title Information
with applications in R /
First Statement of Responsibility
Charles Bouveyron, Gilles Celeux, T. Brendan Murphy, Adrian E. Raftery.

.PUBLICATION, DISTRIBUTION, ETC

Place of Publication, Distribution, etc.
Cambridge :
Name of Publisher, Distributor, etc.
Cambridge University Press,
Date of Publication, Distribution, etc.
2019.

PHYSICAL DESCRIPTION

Specific Material Designation and Extent of Item
1 online resource (xvii, 427 pages)

SERIES

Series Title
Cambridge series in statistical and probabilistic mathematics ;
Volume Designation
50

INTERNAL BIBLIOGRAPHIES/INDEXES NOTE

Text of Note
Includes bibliographical references (pages 386-414) and index.

CONTENTS NOTE

Text of Note
Cover; Half-title; Series information; Title page; Copyright information; Dedication; Contents; Expanded Contents; Preface; 1 Introduction; 1.1 Cluster Analysis; 1.1.1 From Grouping to Clustering; 1.1.2 Model-based Clustering; 1.2 Classification; 1.2.1 From Taxonomy to Machine Learning; 1.2.2 Model-based Discriminant Analysis; 1.3 Examples; 1.4 Software; 1.5 Organization of the Book; 1.6 Bibliographic Notes; 2 Model-based Clustering: Basic Ideas; 2.1 Finite Mixture Models; 2.2 Geometrically Constrained Multivariate Normal Mixture Models; 2.3 Estimation by Maximum Likelihood
Text of Note
2.4 Initializing the EM Algorithm2.4.1 Initialization by Hierarchical Model-based Clustering; 2.4.2 Initialization Using the smallEM Strategy; 2.5 Examples with Known Number of Clusters; 2.6 Choosing the Number of Clusters and the Clustering Model; 2.7 Illustrative Analyses; 2.7.1 Wine Varieties; 2.7.2 Craniometric Analysis; 2.8 Who Invented Model-based Clustering?; 2.9 Bibliographic Notes; 3 Dealing with Difficulties; 3.1 Outliers; 3.1.1 Outliers in Model-based Clustering; 3.1.2 Mixture Modeling with a Uniform Component for Outliers; 3.1.3 Trimming Data with tclust
Text of Note
3.2 Dealing with Degeneracies: Bayesian Regularization3.3 Non-Gaussian Mixture Components and Merging; 3.4 Bibliographic Notes; 4 Model-based Classification; 4.1 Classification in the Probabilistic Framework; 4.1.1 Generative or Predictive Approach; 4.1.2 An Introductory Example; 4.2 Parameter Estimation; 4.3 Parsimonious Classification Models; 4.3.1 Gaussian Classification with EDDA; 4.3.2 Regularized Discriminant Analysis; 4.4 Multinomial Classification; 4.4.1 The Conditional Independence Model; 4.4.2 An Illustration; 4.5 Variable Selection; 4.6 Mixture Discriminant Analysis
Text of Note
4.7 Model Assessment and Selection4.7.1 The Cross-validated Error Rate; 4.7.2 Model Selection and Assessing the Error Rate; 4.7.3 Penalized Log-likelihood Criteria; 5 Semi-supervised Clustering and Classification; 5.1 Semi-supervised Classification; 5.1.1 Estimating the Model Parameters through the EM Algorithm; 5.1.2 A First Experimental Comparison; 5.1.3 Model Selection Criteria for Semi-supervised Classification; 5.2 Semi-supervised Clustering; 5.2.1 Incorporating Must-link Constraints; 5.2.2 Incorporating Cannot-link Constraints; 5.3 Supervised Classification with Uncertain Labels
Text of Note
5.3.1 The Label Noise Problem5.3.2 A Model-based Approach for the Binary Case; 5.3.3 A Model-based Approach for the Multi-class Case; 5.4 Novelty Detection: Supervised Classification with Unobserved Classes; 5.4.1 A Transductive Model-based Approach; 5.4.2 An Inductive Model-based Approach; 5.5 Bibliographic Notes; 6 Discrete Data Clustering; 6.1 Example Data; 6.2 The Latent Class Model for Categorical Data; 6.2.1 Maximum Likelihood Estimation; 6.2.2 Parsimonious Latent Class Models; 6.2.3 The Latent Class Model as a Cluster Analysis Tool; 6.2.4 Model Selection
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SUMMARY OR ABSTRACT

Text of Note
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

OTHER EDITION IN ANOTHER MEDIUM

Title
Model-based clustering and classification for data science.
International Standard Book Number
110849420X
International Standard Book Number
9781108640596

TOPICAL NAME USED AS SUBJECT

Cluster analysis.
Mathematical statistics.
R (Computer program language)
Statistics-- Classification.
Cluster analysis.
Mathematical statistics.
R (Computer program language)
Statistics.

DEWEY DECIMAL CLASSIFICATION

Number
519
.
5/3
Edition
23

LIBRARY OF CONGRESS CLASSIFICATION

Class number
QA278
.
55
Book number
.
M63
2019

PERSONAL NAME - PRIMARY RESPONSIBILITY

Bouveyron, Charles,1979-

PERSONAL NAME - ALTERNATIVE RESPONSIBILITY

Celeux, Gilles
Murphy, T. Brendan,1972-
Raftery, Adrian E.

ORIGINATING SOURCE

Date of Transaction
20200822151215.0
Cataloguing Rules (Descriptive Conventions))
pn

ELECTRONIC LOCATION AND ACCESS

Electronic name
 مطالعه متن کتاب 

[Book]

Y

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