Title of article :
The Hybrid Feature Selection k-means Method for Arabic Webpage Classification
Author/Authors :
Alghamdi, Hanan Universiti Teknologi Malaysia (UTM) - Faculty of Computing, Malaysia , Selamat, Ali Universiti Teknologi Malaysia (UTM) - Faculty of Computing, Malaysia
From page :
73
To page :
79
Abstract :
The high-dimensional data features found in the enormous amount of Arabic text available on the Internet is an important research problem in Web information retrieval. It reduces the accuracy of the clustering algorithms and maximizes the processing time. Selecting the relevant features is the best solution. Therefore, in this paper, we propose a feature selection model that incorporates three different feature selection methods (CHI-squared, mutual information, and term frequency-inverse document frequency) to build a hybrid feature selection model (Hybrid-FS) for k-means clustering. This model represents text data in a high structure (consisting of three types of objects, namely, the terms, documents and categories). We evaluate the model on a set of common Arabic online newspapers. We assess the effect of using the Hybrid-FS with standard k-means clustering. The experimental results show that the proposed method increases purity by 28% and lowers the runtime by 80% compared to the standard k-means algorithm. We conclude that the proposed hybrid feature selection model enhances the accuracy of the kmeans algorithm and successfully produces coherent-compact clusters that are well-separated when applied to high-dimensional datasets.
Keywords :
Feature selection , Arabic , webpage classification , k , means
Journal title :
Jurnal Teknologi :F
Journal title :
Jurnal Teknologi :F
Record number :
2716800
Link To Document :
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