Supervised and unsupervised classification using mixture models
SARACCO, Jerome
Quality control and dynamic reliability [CQFD]
Institut de Mathématiques de Bordeaux [IMB]
Ecole Nationale Supérieure de Cognitique [ENSC]
Quality control and dynamic reliability [CQFD]
Institut de Mathématiques de Bordeaux [IMB]
Ecole Nationale Supérieure de Cognitique [ENSC]
SARACCO, Jerome
Quality control and dynamic reliability [CQFD]
Institut de Mathématiques de Bordeaux [IMB]
Ecole Nationale Supérieure de Cognitique [ENSC]
< Reduce
Quality control and dynamic reliability [CQFD]
Institut de Mathématiques de Bordeaux [IMB]
Ecole Nationale Supérieure de Cognitique [ENSC]
Language
en
Chapitre d'ouvrage
This item was published in
Statistics for Astrophysics: Clustering and Classification, Statistics for Astrophysics: Clustering and Classification. 2016-05-17, vol. 77, p. 69-90
EDP Sciences
English Abstract
This chapter is dedicated to model-based supervised and unsupervised classification.Probability distributions are defined over possible labels as well as over the observations given the labels.To this end, the basic tools ...Read more >
This chapter is dedicated to model-based supervised and unsupervised classification.Probability distributions are defined over possible labels as well as over the observations given the labels.To this end, the basic tools are the mixture models. This methodology yields a posterior distribution over the labels given the observations which allows to quantify the uncertainty of the classification. The role of Gaussian mixture models is emphasized leading to Linear Discriminant Analysis and Quadratic Discriminant Analysis methods. Some links with Fisher Discriminant Analysis and logistic regression are also established.The Expectation-Maximization algorithm is introduced and compared to the $K$-means clustering method.The methods are illustrated both on simulated datasets as well as on real datasets using the R software.Read less <
Origin
Hal imported