阿拉伯语多层次情感分析

Ahmed Nassar, E. Sezer
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引用次数: 1

摘要

在本研究中,我们旨在提高阿拉伯语情感分析的性能结果。这可以通过研究最成功的机器学习方法和最有用的特征向量来实现,将术语和文档级别的情感分为两类(积极或消极)。此外,还研究了具有多个极性的项的一个极性度的规定。为了处理否定和强化,还制定了一些规则。根据获得的结果,人工神经网络分类器被提名为阿拉伯语术语级和文档级情感分析(SA)的最佳分类器。此外,在学期水平SA中,阳性和阴性测试班级的平均f分均为0.92。在文献水平SA中,阳性检验类的平均f值为0.94,阴性检验类的平均f值为0.93。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilevel Sentiment Analysis In Arabic
In this study, we aimed to improve the performance results of Arabic sentiment analysis. This can be achieved by investigating the most successful machine learning method and the most useful feature vector to classify sentiments in both term and document levels into two (positive or negative) categories. Moreover, specification of one polarity degree for the term that has more than one is investigated. Also to handle the negations and intensifications, some rules are developed. According to the obtained results, Artificial Neural Network classifier is nominated as the best classifier in both term and document level sentiment analysis (SA) for Arabic Language. Furthermore, the average F-score achieved in the term level SA for both positive and negative testing classes is 0.92. In the document level SA, the average F-score for positive testing classes is 0.94, while for negative classes is 0.93.
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