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Emotion Recognition from Text Using Semantic Labels and Separable Mixture Models

机译:使用语义标签和可分离混合模型的文本情感识别

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摘要

This study presents a novel approach to automatic emotion recognition from text. First, emotion generation rules (EGRs) are manually deduced from psychology to represent the conditions for generating emotion. Based on the EORs, the emotional state of each sentence can be represented as a sequence of semantic labels (SLs) and attributes (ATTs); SLs are defined as the domain-independent features, while ATTs are domain-dependent. The emotion association rules (EARs) represented by SLs and ATTs for each emotion are automatically derived from the sentences in an emotional text corpus using the a priori algorithm. Finally, a separable mixture model (SMM) is adopted to estimate the similarity between an input sentence and the EARs of each emotional state. Since some features defined in this approach are domain-dependent, a dialog system focusing on the students' daily expressions is constructed, and only three emotional states, happy, unhappy, and neutral, are considered for performance evaluation. According to the results of the experiments, given the domain corpus, the proposed approach is promising, and easily ported into other domains.
机译:这项研究提出了一种从文本自动识别情绪的新颖方法。首先,从心理学中手动推导情绪产生规则(EGR),以表示产生情绪的条件。基于EOR,每个句子的情感状态可以表示为语义标签(SL)和属性(ATT)的序列; SL定义为与域无关的功能,而ATT则与域相关。使用先验算法,从情感文本语料库中的句子中自动得出由SL和ATT代表的每种情感的情感关联规则(EAR)。最后,采用可分离混合模型(SMM)来估计输入句子与每种情绪状态的EAR之间的相似性。由于此方法定义的某些功能取决于领域,因此构建了一个以学生的日常表情为重点的对话系统,并且只考虑了三种情绪状态(快乐,不快乐和中立)进行绩效评估。根据实验结果,给定领域语料库,提出的方法是有希望的,并且很容易移植到其他领域。

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