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Optimal asymmetric classification procedures for interval-screened normal data

机译:区间筛查正常数据的最佳非对称分类程序

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摘要

Statistical methods for an asymmetric normal classification do not adapt well to the situations where the population distributions are perturbed by an interval-screening scheme. This paper explores methods for providing an optimal classification of future samples in this situation. The properties of the screened population distributions are considered and two optimal regions for classifying the future samples are obtained. These developments yield yet other rules for the interval-screened asymmetric normal classification. The rules are studied from several aspects such as the probability of misclassification, robustness, and estimation of the rules. The investigation of the performance of the rules as well as the illustration of the screened classification idea, using two numerical examples, is also considered.
机译:非对称正态分类的统计方法不能很好地适应通过间隔筛选方案干扰人口分布的情况。本文探讨了在这种情况下提供最佳样本分类的方法。考虑筛选种群分布的性质,并获得用于分类未来样本的两个最佳区域。这些发展为间隔筛选的不对称正态分类产生了其他规则。从多个方面研究了规则,例如错误分类的概率,鲁棒性和规则的估计。还考虑了使用两个数值示例对规则的性能进行研究以及对筛选出的分类思想进行了说明。

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