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Improved Emotion Recognition from Microblog Focusing on Both Emoticon and Text

机译:通过关注表情符号和文本的微博改进的情绪识别

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Microblog is very popular among social medias for expressing emotions. Therefore, emotion recognition from microblogs has emerged as an interesting research topic in different prospects. Automatic emotion recognition from microblogs is a challenging machine learning problem. Since emoticons (the graphical emotional icon) are gradually becoming one of the most used elements with texts in microblogs, its proper focus is important for appropriate emotion recognition. Emoticon for emotion recognition has been ignored in most of the previous studies. In this paper, an improved emotion recognition from microblog has been proposed preserving the semantic relation between texts and emoticons. In this case, we considered emoticons as special expressions of emotions of the user and represented the emoticons by appropriate emotional words. We maintained the same sequence of emoticons and text appeared in the microblog. Long Short-Term Memory (LSTM) is used for the classification of emotion. Experimental results on Twitter data reveal the efficiency of the proposed method with higher recognition accuracy compared to recognition considering texts only.
机译:微博在社交媒体中表达情感非常受欢迎。因此,来自微博客的情绪识别已成为不同前景中的一个有趣的研究主题。来自微博客的自动情感识别是一个具有挑战性的机器学习问题。由于表情符号(图形化的情感图标)正逐渐成为微博中文字使用最多的元素之一,因此其适当的关注点对于适当的情感识别至关重要。在大多数先前的研究中,用于情感识别的表情符号已被忽略。本文提出了一种改进的微博情感识别方法,可以保留文本和表情符号之间的语义关系。在这种情况下,我们将表情符号视为用户情感的特殊表达,并通过适当的情感词来表示表情符号。我们维持相同的表情符号顺序,并在微博中显示文字。长短期记忆(LSTM)用于情感分类。在Twitter数据上的实验结果表明,与仅考虑文本的识别相比,该方法具有更高的识别精度,效率更高。

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