Imprecise Imputation as a Tool for Solving Classification Problems with Mean Values of Unobserved Features

L. Utkin, Y. Zhuk
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Abstract

A method for solving a classification problem when there is only partial information about some features is proposed. This partial information comprises the mean values of features for every class and the bounds of the features. In order to maximally exploit the available information, a set of probability distributions is constructed such that two distributions are selected from the set which define the minimax and minimin strategies. Random values of features are generated in accordance with the selected distributions by using the Monte Carlo technique. As a result, the classification problem is reduced to the standard model which is solved by means of the support vector machine. Numerical examples illustrate the proposed method.
不精确归算作为求解未观测特征均值分类问题的工具
提出了一种仅存在部分特征信息的分类问题的解决方法。该部分信息包括每一类特征的平均值和特征的边界。为了最大限度地利用可用信息,构造了一组概率分布,从集合中选择两个分布来定义minimax和minimin策略。利用蒙特卡罗技术根据选择的分布生成特征的随机值。将分类问题简化为标准模型,并利用支持向量机进行求解。数值算例说明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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