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User Mood Tracking for Opinion Analysis on Twitter

机译:在Twitter上进行意见分析的用户心情跟踪

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摘要

The huge variability of trends, community interests and jargon is a crucial challenge for the application of language technologies to Social Media analysis. Models, such as grammars and lexicons, are exposed to rapid obsolescence, due to the speed at which topics as well as slogans change during time. In Sentiment Analysis, several works dynamically acquire the so-called opinionated lexicons. These are dictionaries where information regarding subjectivity aspects of individual words are described. This paper proposes an architecture for dynamic sentiment analysis over Twitter, combining structured learning and lexicon acquisition. Evidence about the beneficial effects of a dynamic architecture is reported through large scale tests over Twitter streams in Italian.
机译:趋势,社区利益和行话的巨大变化是将语言技术应用于社交媒体分析的关键挑战。由于主题和标语随时间变化的速度很快,诸如语法和词典之类的模型很快就会过时。在“情感分析”中,有几本作品动态地获取了所谓的自以为是的词典。这些是字典,其中描述了有关各个单词的主观性方面的信息。本文提出了一种结构化学习和词典获取相结合的Twitter动态情感分析架构。有关动态架构的有益效果的证据是通过对意大利语Twitter流进行的大规模测试报告的。

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