Article ID Journal Published Year Pages File Type
388511 Expert Systems with Applications 2011 8 Pages PDF
Abstract

In this paper, a new classification method (SDCC) for high dimensional text data with multiple classes is proposed. In this method, a subspace decision cluster classification (SDCC) model consists of a set of disjoint subspace decision clusters, each labeled with a dominant class to determine the class of new objects falling in the cluster. A cluster tree is first generated from a training data set by recursively calling a subspace clustering algorithm Entropy Weighting k-Means algorithm. Then, the SDCC model is extracted from the subspace decision cluster tree. Various tests including Anderson–Darling test are used to determine the stopping condition of the tree growing. A series of experiments on real text data sets have been conducted. Their results show that the new classification method (SDCC) outperforms the existing methods like decision tree and SVM. SDCC is particularly suitable for large, high dimensional sparse text data with many classes.

In text classification, one challenging problem is the sparse and high dimensional feature space that can lead to meaningless distance metrics for discriminating samples. This paper presents a novel subspace decision cluster classification (SDCC) method to solve classification problems by clustering processes, where subspace clustering technique can be exploited to effectively identify class distributions in meaningful subspaces. SDCC generates a cluster tree from a training data set by recursively calling a subspace clustering algorithm Entropy Weighting k-means algorithm. Then, the classification model is extracted from the subspace decision cluster tree. A series of experiments on real text data sets have been conducted. Their results show that SDCC outperforms SVM and some other methods, especially for high dimensional text data with many classes.

Keywords
Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
, , ,