DocumentCode
1733924
Title
Text associative classification approach for mining Arabic data set
Author
Ghareb, A.S. ; Hamdan, Abdul Razak ; Bakar, Afarulrazi Abu
Author_Institution
Center for Artificial Intell. Technol., Univ. Kebangsaan Malaysia, Bangi, Malaysia
fYear
2012
Firstpage
114
Lastpage
120
Abstract
Text classification problem receives a lot of research that are based on machine learning, statistical, and information retrieval techniques. In the last decade, the associative classification algorithms which depends on pure data mining techniques appears as an effective method for classification. In this paper, we examine associative classification approach on the Arabic language to mine knowledge from Arabic text data set. Two methods of classification using AC are applied in this study; these methods are single rule prediction and multiple rule prediction. The experimental results against different classes of Arabic data set show that multiple rule prediction method outperforms single rule prediction method with regards to their accuracy. In general, the associative classification approach is a suitable method to classify Arabic text data set, and is able to achieve a good classification performance in terms of classification time and classification accuracy.
Keywords
data mining; information retrieval; learning (artificial intelligence); natural language processing; pattern classification; statistical analysis; text analysis; AC; Arabic data set mining; Arabic language; Arabic text data set; classification accuracy; classification time; information retrieval techniques; machine learning; rule prediction method; statistical techniques; text associative classification approach; text classification problem; Accuracy; Association rules; Classification algorithms; Testing; Text categorization; Training data; Arabic text; associative classification; class association rule;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining and Optimization (DMO), 2012 4th Conference on
Conference_Location
Langkawi
Print_ISBN
978-1-4673-2717-6
Type
conf
DOI
10.1109/DMO.2012.6329808
Filename
6329808
Link To Document