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Sentiment in Short Strength Detection Informal Text

机译:短强度检测非正式文本中的情感

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摘要

A huge number of informal messages are posted every day in social network sites, blogs, and discussion forums. Emotions seem to be frequently important in these texts for expressing friendship, showing social support or as part of online arguments. Algorithms to identify sentiment and sentiment strength are needed to help understand the role of emotion in this informal communication and also to identify inappropriate or anomalous affective utterances, potentially associated with threatening behavior to the self or others. Nevertheless, existing sentiment detection algorithms tend to be commercially oriented, designed to identify opinions about products rather than user behaviors.This article partly fills this gap with a new algorithm, SentiStrength, to extract sentiment strength from informal English text, using new methods to exploit the de facto grammars and spelling styles of cyberspace. Applied to MySpace comments and with a lookup table of term sentiment strengths optimized by machine learning, SentiStrength is able to predict positive emotion with 60.6% accuracy and negative emotion with 72.8% accuracy, both based upon strength scales of 1-5. The former, but not the latter, is better than baseline and a wide range of general machine learning approaches.
机译:每天在社交网站,博客和论坛中都会发布大量的非正式消息。在这些文本中,情绪似乎经常对于表达友谊,显示社会支持或作为在线争论的一部分很重要。需要用于识别情绪和情绪强度的算法,以帮助理解情绪在这种非正式交流中的作用,还需要识别可能与威胁自身或他人行为有关的不适当或异常的情感言语。尽管如此,现有的情感检测算法往往是面向商业的,旨在识别关于产品而不是用户行为的观点。本文使用新算法SentiStrength填补了这一空白,该算法使用新的开发方法从非正式英语文本中提取情感强度网络空间的事实语法和拼写样式。将SentiStrength应用于MySpace注释并使用通过机器学习优化的术语情感强度查找表,能够基于1-5的强度等级来预测60.6%的准确度和72.8%的准确度。前者比基线好,但后者却不如后者,并且比一般机器学习方法还广泛。

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    Statistical Cybermetrics Research Group, School of Computing and Information Technology, University of Wolverhampton, Wulfruna Street, Wolverhampton WV1 1SB, UK;

    rnStatistical Cybermetrics Research Group, School of Computing and Information Technology, University of Wolverhampton, Wulfruna Street, Wolverhampton WV1 1SB, UK;

    rnStatistical Cybermetrics Research Group, School of Computing and Information Technology, University of Wolverhampton, Wulfruna Street, Wolverhampton WV1 1SB, UK;

    rnStatistical Cybermetrics Research Group, School of Computing and Information Technology, University of Wolverhampton, Wulfruna Street, Wolverhampton WV1 1SB, UK;

    rnSchool of Humanities and Social Sciences, Jacobs University Bremen, Campus Ring 1,28759 Bremen, Germany;

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  • 入库时间 2022-08-17 23:16:09

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