Article ID Journal Published Year Pages File Type
382698 Expert Systems with Applications 2013 10 Pages PDF
Abstract

Most popular feature selection methods for text classification such as information gain (also known as “mutual information”), chi-square, and odds ratio, are based on binary information indicating the presence/absence of the feature (or “term”) in each training document. As such, these methods do not exploit a rich source of information, namely, the information concerning how frequently the feature occurs in the training document (term frequency). In order to overcome this drawback, when doing feature selection we logically break down each training document of length k into k training “micro-documents”, each consisting of a single word occurrence and endowed with the same class information of the original training document. This move has the double effect of (a) allowing all the original feature selection methods based on binary information to be still straightforwardly applicable, and (b) making them sensitive to term frequency information. We study the impact of this strategy in the case of ordinal text classification, a type of text classification dealing with classes lying on an ordinal scale, and recently made popular by applications in customer relationship management, market research, and Web 2.0 mining. We run experiments using four recently introduced feature selection functions, two learning methods of the support vector machines family, and two large datasets of product reviews. The experiments show that the use of this strategy substantially improves the accuracy of ordinal text classification.

► A novel feature selection method for text classification is described which exploits term frequency information. ► The method can be used to generate variants of all the popular feature selection metrics. ► The method is studied experimentally in the context of “ordinal” text classification. ► Experiments are run using four feature selection functions, two learning methods, and two large datasets.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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