Machine learning for Arabic text categorization

In this article we propose a distance‐based classifier for categorizing Arabic text. Each category is represented as a vector of words in an m‐dimensional space, and documents are classified on the basis of their closeness to feature vectors of categories. The classifier, in its learning phase, scan...

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Veröffentlicht in:Journal of the American Society for Information Science and Technology 2006-06, Vol.57 (8), p.1005-1010
1. Verfasser: Duwairi, Rehab M.
Format: Artikel
Sprache:eng
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Zusammenfassung:In this article we propose a distance‐based classifier for categorizing Arabic text. Each category is represented as a vector of words in an m‐dimensional space, and documents are classified on the basis of their closeness to feature vectors of categories. The classifier, in its learning phase, scans the set of training documents to extract features of categories that capture inherent category‐specific properties; in its testing phase the classifier uses previously determined category‐specific features to categorize unclassified documents. Stemming was used to reduce the dimensionality of feature vectors of documents. The accuracy of the classifier was tested by carrying out several categorization tasks on an in‐house collected Arabic corpus. The results show that the proposed classifier is very accurate and robust.
ISSN:1532-2882
2330-1635
1532-2890
2330-1643
DOI:10.1002/asi.20360