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拉普拉斯方法在有限混合分布中的应用

An Application of the Laplace Method to Finite Mixture Distributions

Journal of the American Statistical Association · 1994
被引 19
ABS 4

中文导读

提出一种改进的拉普拉斯方法,用于贝叶斯分析中有限混合分布的后验函数估计,该方法具有高渐近精度,并应用于两组实际数据。

Abstract

Abstract An exact Bayesian analysis of finite mixture distributions is often computationally infeasible, because the number of terms in the posterior density grows exponentially with the sample size. A modification of the Laplace method is presented and applied to estimation of posterior functions in a Bayesian analysis of finite mixture distributions. The procedure, which involves computations similar to those required in maximum likelihood estimation, is shown to have high asymptotic accuracy for finite mixtures of certain exponential-family densities. For these mixture densities, the posterior density is also shown to be asymptotically normal. An approximation of the posterior density of the number of components is presented. The method is applied to Duncan's barley data and to a distribution of lake chemistry data for north-central Wisconsin.

贝叶斯分析有限混合分布拉普拉斯方法渐近正态性