Emotion Detection in Unfix-length-Context Conversation

Xiaochen Zhang, Daniel Tang
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Abstract

We leverage different context windows when predicting the emotion of different utterances. New modules are included to realize variable-length context: 1) two speaker-aware units, which explicitly model inner- and inter-speaker dependencies to form distilled conversational context, and 2) a top-k normalization layer, which determines the most proper context windows from the conversational context to predict emotion. Experiments and ablation studies show that our approach outperforms several strong baselines on three public datasets.
非固定长度上下文对话中的情感检测
在预测不同话语的情绪时,我们利用不同的语境窗口。为了实现可变长度的上下文,我们引入了新的模块:1)两个说话人感知单元,它们显式地建模说话人内部和说话人之间的依赖关系,形成提炼的会话上下文;2)一个top-k规范化层,它从会话上下文中确定最合适的上下文窗口来预测情绪。实验和消融研究表明,我们的方法在三个公共数据集上优于几个强基线。
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