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AI
2009
Springer

An Iterative Hybrid Filter-Wrapper Approach to Feature Selection for Document Clustering

13 years 11 months ago
An Iterative Hybrid Filter-Wrapper Approach to Feature Selection for Document Clustering
The manipulation of large-scale document data sets often involves the processing of a wealth of features that correspond with the available terms in the document space. The employment of all these features in the learning machine of interest is time consuming and at times reduces the performance of the learning machine. The feature space may consist of many redundant or non-discriminant features; therefore, feature selection techniques have been widely used. In this paper, we introduce a hybrid feature selection algorithm that selects features by applying both filter and wrapper methods in a hybrid manner, and iteratively selects the most competent set of features with an expectation maximization based algorithm. The proposed method employs a greedy algorithm for feature selection in each step. The method has been tested on various data sets whose results have been reported in this paper. The performance of the method both in terms of accuracy and Normalized Mutual Information is prom...
Mohammad-Amin Jashki, Majid Makki, Ebrahim Bagheri
Added 25 May 2010
Updated 25 May 2010
Type Conference
Year 2009
Where AI
Authors Mohammad-Amin Jashki, Majid Makki, Ebrahim Bagheri, Ali A. Ghorbani
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