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Empirical Bayes estimation utilizing finite Gaussian Mixture Models

机译:利用有限高斯混合模型进行经验贝叶斯估计

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In this paper we develop an identification algorithm to obtain an estimation of the prior distribution in the classical problem of Bayesian inference. We consider the Empirical Bayes approach to obtain the prior distribution approximation by a finite Gaussian mixture. An Expectation-Maximization based algorithm is used to obtain an estimate of the Gaussian mixture parameters. Our approach shows a good approximation of the prior distribution when the number of experiments is increased. We illustrate the estimation performance of our proposal with numerical simulations.
机译:在本文中,我们开发了一种识别算法,以获得贝叶斯推理经典问题中先验分布的估计。我们考虑使用经验贝叶斯方法来获得有限高斯混合的先验分布近似值。基于期望最大化的算法用于获得高斯混合参数的估计。当实验数量增加时,我们的方法显示出先验分布的良好近似值。我们用数值模拟说明了我们建议的估计性能。

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