Exponential family mixed membership models for soft?clustering of multivariate data
Citation:
Arthur White and Thomas Brendan Murphy, Exponential family mixed membership models for soft?clustering of multivariate data, Advances in Data Analysis and Classification, 10, 4, 2016, 521-540Download Item:
Abstract:
For several years, model-based clustering methods have successfully tackled many of the challenges presented by data-analysts. However, as the scope of data analysis has evolved, some problems may be beyond the standard mixture
model framework. One such problem is when observations in a dataset come from overlapping clusters, whereby different clusters will possess similar parameters for multiple variables. In this setting, mixed membership models, a soft clustering approach whereby observations are not restricted to single cluster membership, have proved to be an effective tool. In this paper, a method for fitting mixed membership models to data generated by a member of an exponential family is outlined. The method is applied to count data obtained from an ultra running competition, and compared with a standard mixture model approach.
Sponsor
Grant Number
SFI stipend
12/RC/2289
SFI stipend
08/SRC/I1407
Author's Homepage:
http://people.tcd.ie/arwhiteDescription:
PUBLISHED
Author: White, Arthur
Type of material:
Journal ArticleCollections
Series/Report no:
Advances in Data Analysis and Classification10
4
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Full text availableSubject (TCD):
Applied Statistics , BAYESIAN STATISTICS , CLUSTERING , Data Analysis , METHODS, STATISTICAL , MULTIVARIATE STATISTICS , Mixed-membership models , STATISTICAL ANALYSIS , STATISTICAL-MODELS , Statistical computing , Statistics , model based clusteringDOI:
https://dx.doi.org/10.1007/s11634-016-0267-5Metadata
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