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Leveraging semantics for sentiment polarity detection in social media

机译:利用社交媒体中情感极性检测的语义

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摘要

With the increase use of microblogs and social media platforms as forms of on-line communication, we now have a huge amount of opinionated data reflecting people's opinions and attitudes in form of reviews, forum discussions, blogs and tweets. This has recently brought great interest to sentiment analysis and opinion mining field that analyzes people's feelings and attitudes from written language. Most of the existing approaches on sentiment analysis rely mainly on the presence of affect words that explicitly reflect sentiment. However, these approaches are semantically weak, that is, they do not take into account the semantics of words when detecting their sentiment in text. Only recently a few approaches (e.g. sentic computing) started investigating towards this direction. Following this trend, this paper investigates the role of semantics in sentiment analysis of social media. To this end, frame semantics and lexical resources such as BabelNet are employed to extract semantic features from social media that lead to more accurate sentiment analysis models. Experiments are conducted with different types of semantic information by assessing their impact in four social media datasets which incorporate tweets, blogs and movie reviews. A tenfold cross-validation shows that F1 measure increases significantly when using semantics in sentiment analysis in social media. Results show that the proposed approach considering word's semantics for sentiment analysis surpasses non-semantic approaches for the considered datasets.
机译:随着微博和社交媒体平台的增加作为在线沟通的形式,我们现在拥有巨额自传的数据,反映了人们以评论,论坛讨论,博客和推文的形式反映了人们的意见和态度。这最近对情感分析和意见挖掘领域带来了极大的兴趣,这些领域分析了人们的感情和书面语言的态度。大多数现有的情绪分析方法主要依赖于影响明确反映情绪的词语。然而,这些方法是语义弱,即,当在文本中检测到他们的情绪时,他们不会考虑单词的语义。唯一最近几种方法(例如,派对计算)开始调查这个方向。遵循这一趋势,本文调查了语义在社交媒体情绪分析中的作用。为此,采用Babelnet等帧语义和词汇资源,以从社交媒体提取语义特征,导致更准确的情绪分析模型。通过评估它们在包含推文,博客和电影评论的四个社交媒体数据集中的影响,通过不同类型的语义信息进行实验。十倍交叉验证表明,在社交媒体中的情感分析中使用语义时,F1测量值显着增加。结果表明,考虑Word的情感分析的语义的建议方法超越了考虑的数据集的非语义方法。

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