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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Regularized classification for mixed continuous and categorical variables under across-location heteroscedasticity
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Regularized classification for mixed continuous and categorical variables under across-location heteroscedasticity

机译:跨位置异方差下连续和分类混合变量的正则分类

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摘要

A regularized classifier is proposed for a two-population classification problem of mixed continuous and categorical variables in a general location model(GLOM). The limiting overall expected error for the classifier is given. It can be used in an optimization search for the regularization parameters. For a heteroscedastic spherical dispersion across all locations, an asymptotic error is available which provides an alternative criterion for the optimization search. In addition, the asymptotic error can serve as a baseline for practical comparisons with other classifiers. Results based on a simulation and two real datasets are presented. (c) 2004 Elsevier Inc. All rights reserved.
机译:针对一般位置模型(GLOM)中连续变量和分类变量混合的两种群分类问题,提出了一种正则化分类器。给出了分类器的极限总预期误差。它可以用于优化搜索中的正则化参数。对于在所有位置上的异方差球面色散,可以使用渐近误差,这为优化搜索提供了替代标准。此外,渐近误差可以作为与其他分类器进行实际比较的基准。给出了基于模拟和两个真实数据集的结果。 (c)2004 Elsevier Inc.保留所有权利。

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