使用机器学习技术的阿拉伯语意见挖掘:以阿尔及利亚方言为例研究

Mostefa Kara, A. Laouid, A. Bounceur, O. Aldabbas
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引用次数: 1

摘要

Facebook、Twitter和YouTube等社交网络服务是分析文本、提取观点和识别情感的沃土,因为大量的文本和它们在生活各个领域的多样性。在这份手稿中,我们应用了四种算法来分类用阿尔及利亚方言写的推文。为了提取情感,我们使用了基于三个极性的六个特征。在提出的工作中,我们手动注释了2,891个文本的语料库,并创建了一个包含1328个注释单词的阿尔及利亚习语词典。结果表明,系统的准确率有了一定的提高,达到了85.31的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Arabic Opinion Mining Using Machine Learning Techniques: Algerian Dialect as a Case of Study
Social networking services such as Facebook, Twitter, and YouTube are fertile ground for analyzing texts, extracting opinions, and identifying feelings, due to a large number of texts and their diversity in all areas of life. In this manuscript, we apply four algorithms to classify tweets written in the Algerian dialect. To extract feelings, we used six features based on three polarities. In the presented work, we manually annotate a corpus of 2,891 texts and create an Algerian lexicon of idioms that contains 1328 annotated words. Our results show that there are improvements gained in the accuracy of the system, where we have achieved a better accuracy of 85.31.
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