A machine learning approach for Arabic text classification using N-gram frequency statistics

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摘要

In this paper a machine learning approach for classifying Arabic text documents is presented. To handle the high dimensionality of text documents, embeddings are used to map each document (instance) into R (the set of real numbers) representing the tri-gram frequency statistics profiles for a document. Classification is achieved by computing a dissimilarity measure, called the Manhattan distance, between the profile of the instance to be classified and the profiles of all the instances in the training set. The class (category) to which an instance (document) belongs is the one with the least computed Manhattan measure. The Dice similarity measure is used to compare the performance of method. Results show that tri-gram text classification using the Dice measure outperforms classification using the Manhattan measure.

论文关键词:Data mining,Classification,Categorization,Arabic,N-gram,Machine learning

论文评审过程:Received 28 February 2008, Revised 26 October 2008, Accepted 18 November 2008, Available online 4 January 2009.

论文官网地址:https://doi.org/10.1016/j.joi.2008.11.005