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Selection of the Number of Components Using a Genetic Algorithm for Mixture Model Classifiers

机译:混合模型分类器遗传算法的组分数量选择

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摘要

A genetic algorithm is employed in order to select the appropriate number of components for mixture model classifiers. In this classifier, each class-conditional probability density function can be approximated well using the mixture model of Gaussian distributions. Therefore, the classification performance of this classifier depends on the number of components by nature. In this method, the appropriate number of components is selected on the basis of class separability, while a conventional method is based on likelihood. The combination of mixture models is evaluated by a classification oriented MDL (minimum description length) criterion, and its optimization is carried out using a genetic algorithm. The effectiveness of this method is shown through the experimental results on some artificial and real datasets.
机译:为了选择合适数量的混合模型分类器,采用了遗传算法。在该分类器中,可以使用高斯分布的混合模型很好地近似每个类条件概率密度函数。因此,该分类器的分类性能本质上取决于组件的数量。在这种方法中,根据类别的可分离性选择适当数量的组件,而常规方法则基于似然性。混合模型的组合通过面向分类的MDL(最小描述长度)标准进行评估,并使用遗传算法对其进行优化。通过在一些人工和真实数据集上的实验结果表明了该方法的有效性。

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