Mixture Model-Based Classification

Regular price €64.99
Quantity:
In stock with our UK publisher. 14-28 days
Delivery/Collection within 10-20 working days
14 days return policy Shipping & Delivery
A01=Paul D. McNicholas
advanced statistical methods
Author_Paul D. McNicholas
Bankruptcy Data
Category=JMB
Category=PBT
Category=PS
classes
classifications
complete
Complete Data Log Likelihood
computational statistics
Conditional Maximization Step
Contaminated Gaussian Distributions
data
discriminant
Em Algorithm
eq_bestseller
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_science
eq_society-politics
Excellent Classification Performance
gaussian
Gaussian Mixture Model
Generalized Hyperbolic Distribution
Gig Distribution
GPCM Model
Heavy Tailed Alternative
high-dimensional data analysis
likelihood
log
longitudinal data clustering
map
Map Classification
MCFA Model
Mixture Model
Mixture Model Selection
mixture modeling for statistical classification
Model Based Clustering Analysis
Modified Cholesky Decomposition
MPE Distribution
multivariate data modeling
Simulated Longitudinal Data
Skew Normal Distribution
Skew Normal Random Variable
Sliced Inverse Regression
true
UCI Machine Learn Repository
UCI Repository
Unlabelled Observations
unsupervised learning

Product details

  • ISBN 9780367736958
  • Weight: 453g
  • Dimensions: 156 x 234mm
  • Publication Date: 18 Dec 2020
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
Secure checkout Fast Shipping Easy returns

"This is a great overview of the field of model-based clustering and classification by one of its leading developers. McNicholas provides a resource that I am certain will be used by researchers in statistics and related disciplines for quite some time. The discussion of mixtures with heavy tails and asymmetric distributions will place this text as the authoritative, modern reference in the mixture modeling literature." (Douglas Steinley, University of Missouri)

Mixture Model-Based Classification is the first monograph devoted to mixture model-based approaches to clustering and classification. This is both a book for established researchers and newcomers to the field. A history of mixture models as a tool for classification is provided and Gaussian mixtures are considered extensively, including mixtures of factor analyzers and other approaches for high-dimensional data. Non-Gaussian mixtures are considered, from mixtures with components that parameterize skewness and/or concentration, right up to mixtures of multiple scaled distributions. Several other important topics are considered, including mixture approaches for clustering and classification of longitudinal data as well as discussion about how to define a cluster

Paul D. McNicholas is the Canada Research Chair in Computational Statistics at McMaster University, where he is a Professor in the Department of Mathematics and Statistics. His research focuses on the use of mixture model-based approaches for classification, with particular attention to clustering applications, and he has published extensively within the field. He is an associate editor for several journals and has served as a guest editor for a number of special issues on mixture models.

Paul D. McNicholas is the Canada Research Chair in Computational Statistics at McMaster University, where he is a Professor in the Department of Mathematics and Statistics. His research focuses on the use of mixture model-based approaches for classification, with particular attention to clustering applications, and he has published extensively within the field. He is an associate editor for several journals and has served as a guest editor for a number of special issues on mixture models.

More from this author