Arabic Text Classification review

A millions of the documents are available free and online. These documents must be first organized systematically for its proper utilization to make a decision from it. There are a lot of applications that help in organizing the documents. Text classification is deal with how the document belongs to its suitable class or category. Arabic language is richness and a very complex inflectional language which makes ordinary analysis a very complex task. This paper focuses on the published research in the field of Arabic text classification and presents a scientific view about the process of it and camper the evaluation of text classification techniques that were used.

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