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Emotion-Corpus Guided Lexicons for Sentiment Analysis on Twitter

机译:情感 - 语料库引导词汇在推特上进行情感分析

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Conceptual frameworks for emotion to sentiment mapping have been proposed in Psychology research. In this paper we study this mapping from a computational modelling perspective with a view to establish the role of an emotion-rich corpus for lexicon-based sentiment analysis. We propose two different methods which harness an emotion-labelled corpus of tweets to learn word-level numerical quantification of sentiment strengths over a positive to negative spectrum. The proposed methods model the emotion corpus using a generative unigram mixture model (UMM), combined with the emotion-sentiment mapping proposed in Psychology (Cambria et al. 28th AAAI Conference on Artificial Intelligence, pp. 1515-1521, 2014) [1] for automated generation of sentiment lexicons. Sentiment analysis experiments on benchmark Twitter data sets confirm the quality of our proposed lexicons. Further a comparative analysis with standard sentiment lexicons suggest that the proposed lexicons lead to a significantly better performance in both sentiment classification and sentiment intensity prediction tasks.
机译:在心理学研究中提出了情感情绪的概念框架。在本文中,我们从计算建模角度研究了这种映射,以确定富有基于词典的情绪分析的情感富有语料库的作用。我们提出了两种不同的方法,该方法利用了促销的情感标记的典型语料库,以学习阳性至阴性频谱上的情绪强度的字样数值量化。所提出的方法模拟了使用生成的Unigram混合模型(UMM)的情绪语料库,结合心理学中提出的情感情绪映射(Cambria等人。第28位Aaai人工智能会议,PP。1515-1521,2014)[1]用于自动生成情绪词典。基准推特数据集的情感分析实验证实了我们提出的词典的质量。进一步具有标准情绪词典的比较分析表明,拟议的词典在情绪分类和情绪强度预测任务方面导致了显着更好的性能。

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