DocumentCode :
3716340
Title :
On generative models for sequential formation of clusters
Author :
Petar M. Djurić;Kezi Yu
Author_Institution :
Department of Electrical &
fYear :
2015
Firstpage :
2786
Lastpage :
2790
Abstract :
In the literature of machine learning, a class of unsupervised approaches is based on Dirichlet process mixture models. These approaches fall into the category of nonparametric Bayesian methods, and they find a wide range of applications including in biology, computer science, engineering, and finance. An important assumption of the Dirichlet process mixture models is that the data are exchangeable. This is a restriction for many types of data whose structures vary over time or space or some other independent variables. In this paper, we address generative models that remove the restriction of exchangeability of the Dirichlet process model, which allows for creation of mixtures with time-varying structures. We also address how these models can be applied to sequential estimation of clusters.
Keywords :
"Manganese","Europe","Signal processing","Computational modeling","Mixture models","Bayes methods","Estimation"
Publisher :
ieee
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2015 23rd European
Electronic_ISBN :
2076-1465
Type :
conf
DOI :
10.1109/EUSIPCO.2015.7362892
Filename :
7362892
Link To Document :
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