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Variational expectation-maximization training for Gaussian networks

机译:高斯网络的变分期望最大化训练

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This paper introduces variational expectation-maximization (VEM) algorithm for training Gaussian networks. Hyperparameters model distributions of parameters characterizing Gaussian mixture densities. The proposed algorithm employs a hierarchical learning strategy for estimating a set of hyperparameters and the number of Gaussian mixture components. A dual EM algorithm is employed as the initialization stage in the VEM-based learning. In the first stage the EM algorithm is applied on the given data set while the second stage EM is used on distributions of parameters resulted from several runs of the first stage EM. Appropriate maximum log-likelihood estimators are considered for all the parameter distributions involved.
机译:本文介绍了一种用于训练高斯网络的变分期望最大化(VEM)算法。超参数可模型化表征高斯混合密度的参数分布。所提出的算法采用分层学习策略来估计一组超参数和高斯混合分量的数量。在基于VEM的学习中,将双重EM算法用作初始化阶段。在第一阶段中,将EM算法应用于给定的数据集,而第二阶段EM用于处理由第一阶段EM的多次运行产生的参数分布。对于所涉及的所有参数分布,均应考虑适当的最大对数似然估计量。

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