Sentence-level Emotion Classification with Label and Context Dependence

Shoushan Li, Lei Huang, Rong Wang, Guodong Zhou
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引用次数: 65

Abstract

Predicting emotion categories, such as anger, joy, and anxiety, expressed by a sentence is challenging due to its inherent multi-label classification difficulty and data sparseness. In this paper, we address above two challenges by incorporating the label dependence among the emotion labels and the context dependence among the contextual instances into a factor graph model. Specifically, we recast sentence-level emotion classification as a factor graph inferring problem in which the label and context dependence are modeled as various factor functions. Empirical evaluation demonstrates the great potential and effectiveness of our proposed approach to sentencelevel emotion classification. 1
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基于标签和语境依赖的句子级情感分类
由于其固有的多标签分类困难和数据稀疏性,预测一个句子所表达的情绪类别(如愤怒、喜悦和焦虑)是具有挑战性的。在本文中,我们通过将情感标签之间的标签依赖和上下文实例之间的上下文依赖结合到一个因素图模型中来解决上述两个挑战。具体而言,我们将句子级情感分类重新定义为一个因子图推理问题,其中标签和上下文依赖被建模为各种因子函数。实证评估证明了我们提出的句子级情感分类方法的巨大潜力和有效性。1
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