挖掘阿拉伯语数据集的文本关联分类方法

Abdullah S. Ghareb, A. Hamdan, A. Bakar
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引用次数: 12

摘要

文本分类问题受到了基于机器学习、统计和信息检索技术的大量研究。近十年来,依赖于纯数据挖掘技术的关联分类算法作为一种有效的分类方法出现。本文研究了一种基于阿拉伯语的关联分类方法,用于从阿拉伯语文本数据集中挖掘知识。本研究采用了两种AC分类方法;这些方法包括单规则预测和多规则预测。针对不同类别阿拉伯语数据集的实验结果表明,多规则预测方法的准确率优于单规则预测方法。总的来说,关联分类方法是一种适合对阿拉伯语文本数据集进行分类的方法,并且在分类时间和分类准确率方面都能取得较好的分类性能。
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Text associative classification approach for mining Arabic data set
Text classification problem receives a lot of research that are based on machine learning, statistical, and information retrieval techniques. In the last decade, the associative classification algorithms which depends on pure data mining techniques appears as an effective method for classification. In this paper, we examine associative classification approach on the Arabic language to mine knowledge from Arabic text data set. Two methods of classification using AC are applied in this study; these methods are single rule prediction and multiple rule prediction. The experimental results against different classes of Arabic data set show that multiple rule prediction method outperforms single rule prediction method with regards to their accuracy. In general, the associative classification approach is a suitable method to classify Arabic text data set, and is able to achieve a good classification performance in terms of classification time and classification accuracy.
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