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A Semi-supervised Learning Algorithm on Gaussian Mixture with Automatic Model Selection

机译:高斯混合模型自动选择的半监督学习算法

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摘要

In Gaussian mixture modeling, it is crucial to select the number of Gaussians for a sample set, which becomes much more difficult when the overlap in the mixture is larger. Under regularization theory, we aim to solve this problem using a semi-supervised learning algorithm through incorporating pairwise constraints into entropy regularized likelihood (ERL) learning which can make automatic model selection for Gaussian mixture. The simulation experiments further demonstrate that the presented semi-supervised learning algorithm (i.e., the constrained ERL learning algorithm) can automatically detect the number of Gaussians with a good parameter estimation, even when two or more actual Gaussians in the mixture are overlapped at a high degree. Moreover, the constrained ERL learning algorithm leads to some promising results when applied to iris data classification and image database categorization.
机译:在高斯混合建模中,至关重要的是为样本集选择高斯数量,当混合中的重叠较大时,这将变得更加困难。在正则化理论下,我们旨在通过将成对约束纳入熵正则化似然(ERL)学习中来使用半监督学习算法来解决此问题,从而可以自动选择高斯混合模型。仿真实验进一步证明,即使混合中的两个或多个实际高斯重叠很高,所提出的半监督学习算法(即受约束的ERL学习算法)也可以自动检测具有良好参数估计的高斯数量。学位。此外,受约束的ERL学习算法在应用于虹膜数据分类和图像数据库分类时产生了一些有希望的结果。

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