Literature DB >> 17011164

Robust Bayesian clustering.

Cédric Archambeau1, Michel Verleysen.   

Abstract

A new variational Bayesian learning algorithm for Student-t mixture models is introduced. This algorithm leads to (i) robust density estimation, (ii) robust clustering and (iii) robust automatic model selection. Gaussian mixture models are learning machines which are based on a divide-and-conquer approach. They are commonly used for density estimation and clustering tasks, but are sensitive to outliers. The Student-t distribution has heavier tails than the Gaussian distribution and is therefore less sensitive to any departure of the empirical distribution from Gaussianity. As a consequence, the Student-t distribution is suitable for constructing robust mixture models. In this work, we formalize the Bayesian Student-t mixture model as a latent variable model in a different way from Svensén and Bishop [Svensén, M., & Bishop, C. M. (2005). Robust Bayesian mixture modelling. Neurocomputing, 64, 235-252]. The main difference resides in the fact that it is not necessary to assume a factorized approximation of the posterior distribution on the latent indicator variables and the latent scale variables in order to obtain a tractable solution. Not neglecting the correlations between these unobserved random variables leads to a Bayesian model having an increased robustness. Furthermore, it is expected that the lower bound on the log-evidence is tighter. Based on this bound, the model complexity, i.e. the number of components in the mixture, can be inferred with a higher confidence.

Mesh:

Year:  2006        PMID: 17011164     DOI: 10.1016/j.neunet.2006.06.009

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  3 in total

1.  Near scale-free dynamics in neural population activity of waking/sleeping rats revealed by multiscale analysis.

Authors:  Leonid A Safonov; Yoshikazu Isomura; Siu Kang; Zbigniew R Struzik; Tomoki Fukai; Hideyuki Câteau
Journal:  PLoS One       Date:  2010-09-28       Impact factor: 3.240

2.  Characterizing genetic intra-tumor heterogeneity across 2,658 human cancer genomes.

Authors:  Stefan C Dentro; Ignaty Leshchiner; Kerstin Haase; Maxime Tarabichi; Jeff Wintersinger; Amit G Deshwar; Kaixian Yu; Yulia Rubanova; Geoff Macintyre; Jonas Demeulemeester; Ignacio Vázquez-García; Kortine Kleinheinz; Dimitri G Livitz; Salem Malikic; Nilgun Donmez; Subhajit Sengupta; Pavana Anur; Clemency Jolly; Marek Cmero; Daniel Rosebrock; Steven E Schumacher; Yu Fan; Matthew Fittall; Ruben M Drews; Xiaotong Yao; Thomas B K Watkins; Juhee Lee; Matthias Schlesner; Hongtu Zhu; David J Adams; Nicholas McGranahan; Charles Swanton; Gad Getz; Paul C Boutros; Marcin Imielinski; Rameen Beroukhim; S Cenk Sahinalp; Yuan Ji; Martin Peifer; Inigo Martincorena; Florian Markowetz; Ville Mustonen; Ke Yuan; Moritz Gerstung; Paul T Spellman; Wenyi Wang; Quaid D Morris; David C Wedge; Peter Van Loo
Journal:  Cell       Date:  2021-04-07       Impact factor: 41.582

3.  Spike sorting of heterogeneous neuron types by multimodality-weighted PCA and explicit robust variational Bayes.

Authors:  Takashi Takekawa; Yoshikazu Isomura; Tomoki Fukai
Journal:  Front Neuroinform       Date:  2012-03-19       Impact factor: 4.081

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.