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Multi-dimensional classification with semiparametric mixture model

机译:半尺寸分类和半甲酰胺混合模型

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Compared to non-model based classification methods, the model based classification has the advantage of classification together with regression analysis, and is the interest of our investigation. For robustness, we propose and study a semiparametric mixture model, in which each sub-density is only assumed unimodal. The semiparametric maximum likelihood estimate is used to estimate the parametric and nonparametric components. Then the Bayesian classification rule is used to classify the subjects according to the model. Large sample properties of the estimates are investigated, simulation studies are conducted to evaluate the finite sample performance of the proposed model, and then the method is applied to analyze a real data.
机译:与基于非模型的分类方法相比,基于模型的分类具有分类的优点,以及回归分析,是我们调查的兴趣。 对于稳健性,我们提出并研究了半甲酰胺混合模型,其中每个亚密度仅假设单峰。 半曝光最大似然估计用于估计参数和非参数分量。 然后,贝叶斯分类规则用于根据模型对象进行分类。 研究了估计的大样本性质,进行了仿真研究以评估所提出的模型的有限样本性能,然后应用该方法来分析真实数据。

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