Directed Acyclic Graph Network for Conversational Emotion Recognition

ACL 2021  ·  Weizhou Shen, Siyue Wu, Yunyi Yang, Xiaojun Quan ·

The modeling of conversational context plays a vital role in emotion recognition from conversation (ERC). In this paper, we put forward a novel idea of encoding the utterances with a directed acyclic graph (DAG) to better model the intrinsic structure within a conversation, and design a directed acyclic neural network, namely DAG-ERC, to implement this idea. In an attempt to combine the strengths of conventional graph-based neural models and recurrence-based neural models, DAG-ERC provides a more intuitive way to model the information flow between long-distance conversation background and nearby context. Extensive experiments are conducted on four ERC benchmarks with state-of-the-art models employed as baselines for comparison. The empirical results demonstrate the superiority of this new model and confirm the motivation of the directed acyclic graph architecture for ERC.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Emotion Recognition in Conversation DailyDialog DAG-ERC Micro-F1 59.33 # 10
Emotion Recognition in Conversation EmoryNLP DAG-ERC Weighted-F1 39.02 # 12
Emotion Recognition in Conversation IEMOCAP DAG-ERC Weighted-F1 68.03 # 24
Emotion Recognition in Conversation MELD DAG-ERC Weighted-F1 63.65 # 34

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