基于遗传算法特征选择的阿拉伯语情感分类方法

A. A. Aliane, H. Aliane, M. Ziane, Nacéra Bensaou
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引用次数: 17

摘要

随着最近不同研究团体对意见挖掘的兴趣日益增加,阿拉伯语情绪分析的工作也在不断发展。这种语言很少有可用的极性注释数据集,所以大多数现有的工作都使用这些数据集来测试最著名的监督算法。Naïve贝叶斯和支持向量机是阿拉伯语情感分析文献中报道得最好的算法。本文所描述的工作表明,使用遗传算法来选择特征并提高训练数据集的质量可以显着提高学习算法的准确性。我们使用LABR的书评数据集,并将我们的结果与LABR的作者的结果进行比较。
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A genetic algorithm feature selection based approach for Arabic Sentiment Classification
With the recently increasing interest for opinion mining from different research communities, there is an evolving body of work on Arabic Sentiment Analysis. There are few available polarity annotated datasets for this language, so most existing works use these datasets to test the best known supervised algorithms for their objectives. Naïve Bayes and SVM are the best reported algorithms in the Arabic sentiment analysis literature. The work described in this paper shows that using a genetic algorithm to select features and enhancing the quality of the training dataset improve significantly the accuracy of the learning algorithm. We use the LABR dataset of book reviews and compare our results with LABR's authors' results.
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