上下文感知的情感分类

Buddhika Kasthuriarachchy, K. de Zoysa, H. Premarathne
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引用次数: 1

摘要

情感分析是自然语言处理的一个新兴研究领域,旨在从文本数据中识别积极和消极的观点和情绪。目前。情感分析的研究工作范围从文档级分类到句子级。短语级或方面/特征级分析。上下文感知是情感分类的关键,因为特定的评价短语在一个上下文中可能表达积极的情绪,而在另一个上下文中可能表达消极的情绪。例如,形容词“不可预测的”可能在汽车评论中具有负面倾向,例如“不可预测的转向”,但它可能在电影评论中具有积极倾向,例如“不可预测的情节”。此外,不仅文档的上下文很重要,而且我们评估的特性或方面的领域也起着重要作用。酒店评论可能包含“热水”,它具有积极的语义取向,而“热房间”具有消极的语义取向。因此,语境极性在情感分类中起着至关重要的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-aware sentiment classification
Sentiment Analysis is a growing research area of Natural Language Processing which aims at identifying positive and negative opinions and emotions from a textual data. Presently. Sentiment Analysis research works range from document level classification to sentence-level. phrase-level or aspect/feature level analysis. Context-awareness is of key important for sentiment classification since particular evaluation phrase in one context may express a positive sentiment while in another context it may express a negative sentiment. For example, the adjective "unpredictable" may have a negative orientation in an automotive review, in a phrase such as "unpredictable steering", but it could have a positive orientation in a movie review, in a phrase such as "unpredictable plot". Further, not only the context of the documents is important but also the domain of the feature or aspect that we evaluate plays an important role. Hotel reviews may contain "hot water", which has a positive semantic orientation, whereas "hot room" has a negative orientation. Thus, contextual polarity plays a vital role in sentiment classification.
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