Large-scale Arabic Text Classification: an Approach Towards Distributed Data Mining - Mohammed M. Abu Tair - Books - LAP LAMBERT Academic Publishing - 9783659347665 - February 25, 2013
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Large-scale Arabic Text Classification: an Approach Towards Distributed Data Mining

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Text classification has become one of the most important techniques in text mining. A number of machine learning algorithms have been introduced to deal with automatic text classification. One of the common classification algorithms is the k-NN algorithm which is known to be one of the best classifiers applied for different languages including Arabic language. However, the k-NN algorithm is of low efficiency because it requires a large amount of computational power. Such a drawback makes it unsuitable to handle a large volume of text documents with high dimensionality and in particular in the Arabic language. This book, therefore, introduces a high performance parallel classifier for large-scale Arabic text that achieves the enhanced level of efficiency, scalability, and accuracy. The parallel classifier based on the sequential k-NN algorithm. We tested the classifier using the OSAC corpus. We studied the performance of the parallel classifier on a multicomputer cluster. The results indicate that the parallel classifier has very good speedups and scalability and is capable of handling large document collections with higher classification results.

Media Books     Paperback Book   (Book with soft cover and glued back)
Released February 25, 2013
ISBN13 9783659347665
Publishers LAP LAMBERT Academic Publishing
Pages 128
Dimensions 150 × 8 × 225 mm   ·   209 g
Language German