| Literature DB >> 26925189 |
Abel Rodríguez1, Alex Lenkoski2, Adrian Dobra3.
Abstract
Standard Gaussian graphical models implicitly assume that the conditional independence among variables is common to all observations in the sample. However, in practice, observations are usually collected from heterogeneous populations where such an assumption is not satisfied, leading in turn to nonlinear relationships among variables. To address such situations we explore mixtures of Gaussian graphical models; in particular, we consider both infinite mixtures and infinite hidden Markov models where the emission distributions correspond to Gaussian graphical models. Such models allow us to divide a heterogeneous population into homogenous groups, with each cluster having its own conditional independence structure. As an illustration, we study the trends in foreign exchange rate fluctuations in the pre-Euro era.Entities:
Keywords: Covariance selection; Dirichlet process; Gaussian graphical model; hidden Markov model; mixture model; nonparametric Bayes inference
Year: 2011 PMID: 26925189 PMCID: PMC4767329 DOI: 10.1214/11-EJS634
Source DB: PubMed Journal: Electron J Stat ISSN: 1935-7524 Impact factor: 1.125