相互信息
点态互信息
条件互信息
熵(时间箭头)
交互信息
相关性(法律)
特征选择
数据挖掘
信息图表
计算机科学
数学
信息论
度量(数据仓库)
联合熵
理论计算机科学
人工智能
模式识别(心理学)
算法
最大熵原理
二元熵函数
统计
最大熵热力学
物理
量子力学
法学
政治学
作者
Qinghua Hu,Lei Zhang,Wei Pan,Shuang An,Witold Pedrycz
标识
DOI:10.1016/j.eswa.2011.01.023
摘要
Measures of relevance between features play an important role in classification and regression analysis. Mutual information has been proved an effective measure for decision tree construction and feature selection. However, there is a limitation in computing relevance between numerical features with mutual information due to problems of estimating probability density functions in high-dimensional spaces. In this work, we generalize Shannon’s information entropy to neighborhood information entropy and propose a measure of neighborhood mutual information. It is shown that the new measure is a natural extension of classical mutual information which reduces to the classical one if features are discrete; thus the new measure can also be used to compute the relevance between discrete variables. In addition, the new measure introduces a parameter delta to control the granularity in analyzing data. With numeric experiments, we show that neighborhood mutual information produces the nearly same outputs as mutual information. However, unlike mutual information, no discretization is required in computing relevance when used the proposed algorithm. We combine the proposed measure with four classes of evaluating strategies used for feature selection. Finally, the proposed algorithms are tested on several benchmark data sets. The results show that neighborhood mutual information based algorithms yield better performance than some classical ones.
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