Sentiment- Emotion- and Context-Guided Knowledge Selection Framework for Emotion Recognition in Conversations

话语 背景(考古学) 选择(遗传算法) 计算机科学 代表(政治) 自然语言处理 常识 人工智能 知识表示与推理 心理学 政治学 生物 政治 古生物学 法学
作者
Geng Tu,Bin Liang,Dazhi Jiang,Ruifeng Xu
出处
期刊:IEEE Transactions on Affective Computing [Institute of Electrical and Electronics Engineers]
卷期号:14 (3): 1803-1816 被引量:46
标识
DOI:10.1109/taffc.2022.3223517
摘要

Emotion recognition in conversations (ERC) needs to detect the emotion of each utterance in conversations. However, it is difficult for machines to recognize the emotion of utterances like humans, partly because of the lack of commonsense knowledge. Despite existing efforts gradually incorporate knowledge in ERC, they can not adaptively adjust knowledge according to different utterances and their context. In this article, we propose a knowledge selection framework SKSEC ( S elect K nowledge in light of S entiment E motion and C ontext). In the SKSEC framework, first, external knowledge is eliminated by three Knowledge Elimination (KE) modules. More concretely, In word-level KE, the concept knowledge different from the sentiment corresponding to the word in utterances is randomly eliminated. In utterance- or context-level KE, If the similarity between the knowledge representation and the emotion label representation of the current utterance or its context is less than the preset threshold, the knowledge will be eliminated. Then we refine the weight of knowledge using two Graph ATtention (GAT) mechanisms. Specifically, In Sentics GAT, we employ a dimensional emotion model to measure words in utterances and their corresponding knowledge and adjust the weight of knowledge according to their emotional similarity. In Semantics GAT, the weight of knowledge is adjusted according to the semantic similarity between context and incorporated knowledge. Finally, we feed the selected knowledge to the most advanced models to evaluate the quality of knowledge. The experimental results show that the SKSEC framework can effectively improve the performance of the model by eliminating and refining external knowledge in different size and domain datasets.
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