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Time-efficient estimation of conditional mutual information for variable selection in classification

机译:分类中变量选择的条件互信息的时效估计

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摘要

An algorithm is proposed for calculating correlation measures based on entropy. The proposed algorithm allows exhaustive exploration of variable subsets on real data. Its time efficiency is demonstrated by comparison against three other variable selection methods based on entropy using 8 data sets from various domains as well as simulated data. The method is applicable to discrete data with a limited number of values making it suitable for medical diagnostic support, DNA sequence analysis, psychometry and other domains.
机译:提出了一种基于熵的相关度量计算算法。所提出的算法允许详尽探索真实数据上的变量子集。通过使用来自不同领域的8个数据集以及基于模拟数据的基于熵的其他三种变量选择方法进行比较,证明了其时间效率。该方法适用于数量有限的离散数据,使其适用于医学诊断支持,DNA序列分析,心理测验和其他领域。

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