Improved letter weighting feature selection on arabic script language identification

Language identification is the process identifying predefined language in a document automatically; we focused on the web documents in this paper. Initially, we have applied the letter frequency as features combine with neural networks in Arabic script language identification. However, reliability o...

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Bibliographic Details
Main Authors: Ng, Choon-Ching, Selamat, Ali
Format: Book Section
Published: IEEE 2009
Subjects:
Description
Summary:Language identification is the process identifying predefined language in a document automatically; we focused on the web documents in this paper. Initially, we have applied the letter frequency as features combine with neural networks in Arabic script language identification. However, reliability of selected letters of the features is a major issue to be overcome. Therefore, we propose an improved letter weighting feature selection in order to enhance the effectiveness of language identification. It is based on the concept letter frequency document frequency. From the experiments, we have found that the improved letter weighting feature selection achieve the highest accuracy 99.75% on Arabic script language identification.