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Classification using semiparametric mixtures

机译:使用Semiparametric Mixtures进行分类

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A new density-based classification method that uses semiparametric mixtures is proposed. Like other density-based classifiers, it first estimates the probability density function for the observations in each class, with a semiparametric mixture, and then classifies a new observation by the highest posterior probability. By making a proper use of a multivariate nonparametric density estimator that has been developed recently, it is able to produce adaptively smooth and complicated decision boundaries in a high-dimensional space and can thus work well in such cases. Issues specific to classification are studied and discussed. Numerical studies using simulated and real-world data show that the new classifier performs very well as compared with other commonly used classification methods.
机译:提出了一种新的基于密度的分类方法,其使用半甲酰胺混合物。与其他基于密度的分类器类似,首先估计每种类别中观察的概率密度函数,具有半甲酰胺混合物,然后通过最高的后概率来分类新观察。通过最近开发的多变量非参数密度估计器进行适当的使用,它能够在高维空间中产生自适应的光滑和复杂的判定边界,因此可以在这种情况下工作。研究和讨论了特定于分类的问题。使用模拟和现实数据的数值研究表明,与其他常用的分类方法相比,新分类器的执行非常好。

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