从主体性到礼貌检测的情感分析:社会语用视角下的仇恨言论

Samar Assem, S. Alansary
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引用次数: 1

摘要

虽然情感分析的定义是自然语言处理的一个领域,其重点是分析文本,以评估、分析和检测人类在一系列领域的心理状态,但大多数研究将其局限于意见挖掘。然而,意见挖掘只是情绪分析下其他三个子领域中的一个,它们是;观点挖掘、情感挖掘和歧义检测。值得注意的是,歧义检测被认为是其他两个子领域的结合,因为它的语言学性质认为统计和/或句法语义分析水平不足以达到令人满意的消除人类语言歧义的水平。因此,本文建议深入挖掘,达到语用和社会语用层面的分析,以消除歧义,避免对文本和社交媒体帖子的误判,特别是在检测仇恨言论的子任务中。因此,本文建议使用折衷的语言分析模型,包括言语行为理论和(非)礼貌理论。
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Sentiment Analysis From Subjectivity to (Im)Politeness Detection: Hate Speech From a Socio-Pragmatic Perspective
Although sentiment analysis by definition is that field of Natural Language processing which focuses on analyzing texts that tackle evaluating, analyzing and detecting the state of mind of the human beings towards a range of domains, most of the studies limit it to opinion mining. Yet, opinion mining is just one sub-field of three others under the umbrella of sentiment analysis which are; opinion mining, emotion mining and ambiguity detection. Noticeably, ambiguity detection is considered to be a combination of the other two sub-fields thanks to its linguistic nature that considers statistical and/or syntactic-semantic levels of analysis are not adequate to reach a satisfying level of disambiguating human language. Henceforth, the current paper proposes digging deeply to reach pragmatic and socio-pragmatic levels of analysis in order to eliminate ambiguity and avoid misjudgments over texts and social media posts specifically in the sub-tasks of detecting hate speech. Accordingly, it suggests utilizing an eclectic linguistic model of analysis includes speech act theory and the theory of (im)politeness.
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