Information gain based dimensionality selection for classifying text documents

Dumidu Wijayasekara, M. Manic, M. McQueen
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引用次数: 4

Abstract

Selecting the optimal dimensions for various knowledge extraction applications is an essential component of data mining. Dimensionality selection techniques are utilized in classification applications to increase the classification accuracy and reduce the computational complexity. In text classification, where the dimensionality of the dataset is extremely high, dimensionality selection is even more important. This paper presents a novel, genetic algorithm based methodology, for dimensionality selection in text mining applications that utilizes information gain. The presented methodology uses information gain of each dimension to change the mutation probability of chromosomes dynamically. Since the information gain is calculated a priori, the computational complexity is not affected. The presented method was tested on a specific text classification problem and compared with conventional genetic algorithm based dimensionality selection. The results show an improvement of 3% in the true positives and 1.6% in the true negatives over conventional dimensionality selection methods.
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基于信息增益的文本文档分类维数选择
为各种知识提取应用选择最优维度是数据挖掘的重要组成部分。在分类应用中,维数选择技术用于提高分类精度和降低计算复杂度。在文本分类中,数据集的维数非常高,维数选择就显得尤为重要。本文提出了一种新的基于遗传算法的方法,用于利用信息增益的文本挖掘应用中的维数选择。该方法利用各维的信息增益动态改变染色体的突变概率。由于信息增益是先验计算的,因此不影响计算复杂度。在一个具体的文本分类问题上对该方法进行了测试,并与基于维数选择的传统遗传算法进行了比较。结果表明,与传统的维度选择方法相比,真阳性和真阴性分别提高了3%和1.6%。
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