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Approximating the predictive distribution of the beta distribution with the local variational method

机译:用局部变分法逼近β分布的预测分布

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In the Bayesian framework, the predictive distribution is obtained by averaging over the posterior parameter distribution. When there is a small amount of data, the uncertainty of the parameters is high. Thus with the predictive distribution, a more reliable result can be obtained in the applications as classification, recognition, etc. In the previous works, we have utilized the variational inference framework to approximate the posterior distribution of the parameters in the beta distribution by minimizing the Kullback-Leibler divergence of the true posterior distribution from the approximating one. However, the predictive distribution of the beta distribution was approximated by a plug-in approximation with the posterior mean, regardless of the parameter uncertainty. In this paper, we carry on the factorized approximation introduced in the previous work and approximate the beta function by its first order Taylor expansion. Then the upper bound of the predictive distribution is derived by exploiting the local variational method. By minimizing the upper bound of the predictive distribution and after normalization, we approximate the predictive distribution by a probability density function in a closed form. Experimental results shows the accuracy and efficiency of the proposed approximation method.
机译:在贝叶斯框架中,通过对后验参数分布求平均值来获得预测分布。当数据量较少时,参数的不确定性很高。因此,利用预测分布,可以在分类,识别等应用程序中获得更可靠的结果。在先前的工作中,我们利用变分推断框架通过最小化β分布来近似参数在β分布中的后验分布。真实后验分布与近似值的Kullback-Leibler散度。但是,无论参数不确定性如何,β分布的预测分布都可以通过后均值的插件近似来近似。在本文中,我们进行了先前工作中介绍的因式近似,并通过其一阶泰勒展开式对beta函数进行了近似。然后利用局部变分方法推导了预测分布的上限。通过最小化预测分布的上限,并在归一化后,我们通过封闭形式的概率密度函数来近似预测分布。实验结果表明了该近似方法的准确性和有效性。

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