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Spike-and-Slab Dirichlet Process Mixture Models

Spike-and-Slab Dirichlet Process Mixture Models
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摘要 In this paper, Spike-and-Slab Dirichlet Process (SS-DP) priors are introduced and discussed for non-parametric Bayesian modeling and inference, especially in the mixture models context. Specifying a spike-and-slab base measure for DP priors combines the merits of Dirichlet process and spike-and-slab priors and serves as a flexible approach in Bayesian model selection and averaging. Computationally, Bayesian Expectation-Maximization (BEM) is utilized to obtain MAP estimates. Two simulated examples in mixture modeling and time series analysis contexts demonstrate the models and computational methodology. In this paper, Spike-and-Slab Dirichlet Process (SS-DP) priors are introduced and discussed for non-parametric Bayesian modeling and inference, especially in the mixture models context. Specifying a spike-and-slab base measure for DP priors combines the merits of Dirichlet process and spike-and-slab priors and serves as a flexible approach in Bayesian model selection and averaging. Computationally, Bayesian Expectation-Maximization (BEM) is utilized to obtain MAP estimates. Two simulated examples in mixture modeling and time series analysis contexts demonstrate the models and computational methodology.
出处 《Open Journal of Statistics》 2012年第5期512-518,共7页 统计学期刊(英文)
关键词 SPIKE and SLAB DIRICHLET Process BAYESIAN EXPECTATION-MAXIMIZATION (BEM) Mixture Spike and Slab Dirichlet Process Bayesian Expectation-Maximization (BEM) Mixture
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