Enhanced Filter Feature Selection Methods for Arabic Text Categorization
The filtering of a large amount of data is an important process in data mining tasks, particularly for the categorization of unstructured high dimensional data. Therefore, a feature selection process is desired to reduce the space of high dimensional data into small relevant subset dimensions that represent the best features for text categorization. In this article, three enhanced filter feature selection methods, Category Relevant Feature Measure, Modified Category Discriminated Measure, and Odd Ratio2, are proposed. These methods combine the relevant information about features in both the inter- and intra-category. The effectiveness of the proposed methods with Naïve Bayes and associative classification is evaluated by traditional measures of text categorization, namely, macro-averaging of precision, recall, and F-measure. Experiments are conducted on three Arabic text datasets used for text categorization. The experimental results showed that the proposed methods are able to achieve better and comparable results when compared to 12 well known traditional methods.
Year of publication: |
2018
|
---|---|
Authors: | Ghareb, Abdullah Saeed ; Abu Bakara, Azuraliza ; Al-Radaideh, Qasem A. ; Hamdan, Abdul Razak |
Published in: |
International Journal of Information Retrieval Research (IJIRR). - IGI Global, ISSN 2155-6385, ZDB-ID 2703390-9. - Vol. 8.2018, 2 (01.04.), p. 1-24
|
Publisher: |
IGI Global |
Subject: | Arabic Text Categorization | Associative Classification | Feature Selection | Naïve Bayes |
Saved in:
Online Resource
Saved in favorites
Similar items by subject
-
Hao, Yuhan, (2018)
-
Bayesian Feature Selection for Clustering Problems
Hruschka, Eduardo R., (2006)
-
EMAIL SPAM DETECTION: A SYMBIOTIC FEATURE SELECTION APPROACH FOSTERED BY EVOLUTIONARY COMPUTATION
SOUSA, PEDRO, (2013)
- More ...
Similar items by person