Causal Emotion Entailment aims to identify causal utterances that are responsible for the target utterance with a non-neutral emotion in conversations. Previous works are limited in thorough understanding of the conversational context and accurate reasoning of the emotion cause. To this end, we propose Knowledge-Bridged Causal Interaction Network (KBCIN) with commonsense knowledge (CSK) leveraged as three bridges. Specifically, we construct a conversational graph for each conversation and leverage the event-centered CSK as the semantics-level bridge (S-bridge) to capture the deep inter-utterance dependencies in the conversational context via the CSK-Enhanced Graph Attention module. Moreover, social-interaction CSK serves as emotion-level bridge (E-bridge) and action-level bridge (A-bridge) to connect candidate utterances with the target one, which provides explicit causal clues for the Emotional Interaction module and Actional Interaction module to reason the target emotion. Experimental results show that our model achieves better performance over most baseline models. Our source code is publicly available at https://github.com/circle-hit/KBCIN.
翻译:健康与健康之间互动网络(KBCIN) 以三条桥梁为杠杆。 具体地说, 我们为每次对话绘制一个对话对话图, 利用以事件为焦点的CSK作为语义级桥梁( S-Bridge), 通过 CSK- Enhanced 图形关注模块捕捉对话环境中的深度间依赖性。 此外, 社会间行动 CSK 充当情感- 水平桥梁(E- bridge) 和行动级桥梁(A-bridge), 将候选人的言辞与目标一连接起来, 目标一为情感互动模块和行动互动模块提供明确的因果线索, 为目标情感提供理由。 实验结果显示, 我们的模型在大多数基线模型上取得了更好的性能。 我们的源代码在 https://giphub.K/comclicle.