首页> 外文会议>International Conference on Rough Sets and Knowledge Technology(RSKT 2006); 20060724-26; Chongqing(CN) >A Generalized Competitive Learning Algorithm on Gaussian Mixture with Automatic Model Selection
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A Generalized Competitive Learning Algorithm on Gaussian Mixture with Automatic Model Selection

机译:高斯混合模型自动选择的广义竞争学习算法。

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摘要

Derived from regularization theory, an adaptive entropy regularized likelihood (ERL) learning algorithm is presented for Gaussian mixture modeling, which is then proved to be actually a generalized competitive learning. The simulation experiments demonstrate that our adaptive ERL learning algorithm can make the parameter estimation with automatic model selection for Gaussian mixture even when two or more Gaussians are overlapped in a high degree.
机译:从正则化理论出发,提出了一种自适应熵正则化似然(ERL)学习算法,用于高斯混合建模,被证明是一种广义的竞争学习方法。仿真实验表明,即使两个或多个高斯高度重叠,我们的自适应ERL学习算法也可以通过自动选择模型来进行高斯混合参数估计。

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