Sciweavers

ACML
2009
Springer

Linear Time Model Selection for Mixture of Heterogeneous Components

13 years 11 months ago
Linear Time Model Selection for Mixture of Heterogeneous Components
Abstract: Our main contribution is to propose a novel model selection methodology, expectation minimization of information criterion (EMIC). EMIC makes a significant impact on the combinatorial scalability issue pertaining to the model selection for mixture models having types of components. A goal of such problems is to optimize types of components as well as the number of components. One key idea in EMIC is to iterate calculations of the posterior of latent variables and minimization of expected value of information criterion of both observed data and latent variables. This enables EMIC to compute the optimal model in linear time with respect to both the number of components and the number of available types of components despite the fact that the number of model candidates exponentially increases with the numbers. We prove that EMIC is compliant with some information criteria and enjoys their statistical benefits.
Ryohei Fujimaki, Satoshi Morinaga, Michinari Momma
Added 25 May 2010
Updated 25 May 2010
Type Conference
Year 2009
Where ACML
Authors Ryohei Fujimaki, Satoshi Morinaga, Michinari Momma, Kenji Aoki, Takayuki Nakata
Comments (0)