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HEMOS: A novel deep learning-based fine-grained humor detecting method for sentiment analysis of social media

机译:HEMOS:一种新型深度学习的微粒幽默检测方法,具有社会媒体的情感分析

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摘要

In this paper we introduce HEMOS (Humor-EMOji-Slang-based) system for fine-grained sentiment classification for the Chinese language using deep learning approach. We investigate the importance of recognizing the influence of humor, pictograms and slang on the task of affective processing of the social media. In the first step, we collected 576 frequent Internet slang expressions as a slang lexicon; then, we converted 109 Weibo emojis into textual features creating a Chinese emoji lexicon. In the next step, by performing two polarity annotations with new "optimistic humorous type" and "pessimistic humorous type" added to standard "positive" and "negative" sentiment categories, we applied both lexicons to attention-based bi-directional long short-term memory recurrent neural network (AttBiLSTM) and tested its performance on undersized labeled data. Our experimental results show that the proposed method can significantly improve the state-of-the-art methods in predicting sentiment polarity on Weibo, the largest Chinese social network.
机译:本文使用深层学习方法介绍了汉语(幽默 - 表情符号俚语)系统,为汉语进行细粒度情绪分类。我们调查认识到幽默,象形图和俚语对社交媒体的情感加工任务的影响的重要性。在第一步中,我们收集了576次频繁的互联网俚语表达式作为俚语词典;然后,我们将109微博Emojis转换为文本功能,创建了中国表情符号词典。在下一步中,通过用新的“乐观幽默类型”和“悲观幽默类型”进行两个极性注释,并添加到标准的“正”和“负”情感类别中,我们将词汇应用于基于关注的双向长短术语内存经常性神经网络(attBilstm)并在尺寸标记数据上测试其性能。我们的实验结果表明,该方法可以显着提高中国最大的社交网络Weibo的情感极性的最先进方法。

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