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A variable step learning algorithm for Gaussian mixture models based on the Bhattacharyya coefficient and correlation coefficient criterion

机译:基于Bhattacharyya系数和相关系数准则的高斯混合模型的变步学习算法。

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摘要

The expectation maximization (EM) algorithm is one of the most enduring ways to estimate the parameters of Gaussian mixture models. However, the EM algorithm needs to know in advance the true number of mixing components, and its performance highly depends on the initial parameters, which leads to use it difficultly in practice. To overcome the above two drawbacks, a variable step learning algorithm is proposed for learning a Gaussian mixture models. The novelty of the algorithm is that a variable step search strategy is proposed to find the actual number of Gaussian mixture components, or slightly above it. This number is obtained by maximizing the Bhattacharyya coefficient criterion, which in turn quantifies how close the Gaussian mixtures models fit the observed data. Furthermore, the initialization parameters are determined by the correlation coefficient criterion representing the shape characteristics between the new GMM and the histograms of the data. Based on these two criteria, the proposed algorithm can make both parameter learning and model selection more efficient, as shown by the conducted experiments. (C) 2017 Elsevier B.V. All rights reserved.
机译:期望最大化(EM)算法是估计高斯混合模型参数最持久的方法之一。然而,EM算法需要事先知道混合成分的真实数量,并且其性能高度依赖于初始参数,这导致在实践中难以使用它。为了克服上述两个缺点,提出了一种可变步长学习算法,用于学习高斯混合模型。该算法的新颖之处在于,提出了一种可变步长搜索策略来找到实际的高斯混合分量数目,或者稍微高于它。这个数字是通过最大化Bhattacharyya系数标准而获得的,该标准反过来又量化了高斯混合模型拟合观测数据的接近程度。此外,初始化参数由表示新GMM和数据直方图之间的形状特征的相关系数标准确定。根据这两个标准,所进行的实验表明,该算法可以使参数学习和模型选择更加有效。 (C)2017 Elsevier B.V.保留所有权利。

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