A Commonsense Knowledge Enhanced Network with Retrospective Loss for Emotion Recognition in Spoken Dialog

Yunhe Xie, Chengjie Sun, Zhenzhou Ji
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引用次数: 4

Abstract

The recent surges in the open conversational data caused Emotion Recognition in Spoken Dialog (ERSD) to gain much attention. However, the existing ERSD datasets’ scale limits the model’s complete reasoning. Moreover, the artificial dialogue agent is ideally able to reference past dialogue experiences. This paper proposes a Commonsense Knowledge Enhanced Network with a retrospective loss, namely CKE-Net, to hierarchically perform dialog modeling, external knowledge integration, and historical state retrospect. Specifically, we first adopt a transformer-based encoder to model context in multi-view by elaborating different mask matrices. Then, the graph attention network is used to introduce commonsense knowledge, which benefits the complex emotional reasoning. Finally, a retrospective loss is added to utilize the model’s prior experience during training. Experiments on IEMOCAP and MELD datasets demonstrate that every designed module is consistently beneficial to the performance. Extensive experimental results show that our model outperforms the state-of-the-art models across the two benchmark datasets.
具有回顾损失的常识知识增强网络用于口语对话中的情绪识别
近年来,开放会话数据的激增使得语音对话中的情绪识别(ERSD)受到了广泛的关注。然而,现有ERSD数据集的规模限制了模型的完整推理。此外,理想情况下,人工对话代理能够参考过去的对话经验。本文提出了一种具有回溯损失的常识知识增强网络,即CKE-Net,它可以分层次地进行对话建模、外部知识集成和历史状态回顾。具体而言,我们首先采用基于变压器的编码器,通过精心设计不同的掩模矩阵来模拟多视图下的上下文。然后利用图注意网络引入常识性知识,有利于复杂的情感推理。最后,加入回顾性损失以利用模型在训练期间的先验经验。在IEMOCAP和MELD数据集上的实验表明,所设计的每个模块都能一致地提高性能。大量的实验结果表明,我们的模型在两个基准数据集上优于最先进的模型。
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