基于表情符号的情感词极性识别

Shuigui Huang, Wenwen Han, Xirong Que, Wendong Wang
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引用次数: 16

摘要

情感词的倾向性在情感分析中起着重要的作用,但现有的方法难以对汉语词的倾向性进行分类,尤其是对网络中新出现的词语。大多数方法是使用大语料库挖掘情感词和种子词之间的关联,并手动标记具有明确方向的种子词。但对种子词的高效选择研究较少。正如我们所观察到的,表情符号因其简单和可视化而在社交网络上被广泛使用,是情感取向的良好指标。为此,本文提出了基于表情符号的情感词模型,利用表情符号的方向建立情感词的定向模型,并用SVM分类器对模型进行训练。同时,本文提出了一种高效的表情符号方向自动分类方法。实验表明,表情符号分类准确率可达93.6%,情感词分类准确率可达81.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Polarity Identification of Sentiment Words Based on Emoticons
The orientation of sentiment words plays an important role in the sentiment analysis, but existing methods have difficulty in classifying the orientation of Chinese words, especially for the newly emerged words in Internet. Most approaches are mining the association between sentiment words and seed words using the big corpora and manually labeled seed words with definite orientation. But less work has ever focused on the efficient seed words selection. As we observed, emoticons, which are widely used on social network because of the simplicity and visualization, are good indicators for sentiment orientation. Thus this paper proposes the sentiment word model based on emoticons, which built orientation model of sentiment words with the orientation of emoticons, and train the model with the SVM classifier. Meanwhile, this work proposes a high efficient way to automatically classify the orientation of emoticons. Experiments show the precision rate of emoticon classification could reach 93.6%, and that of sentiment words classification could be 81.5%.
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