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3 months ago

Directed Acyclic Graph Network for Conversational Emotion Recognition

Weizhou Shen Siyue Wu Yunyi Yang Xiaojun Quan

Directed Acyclic Graph Network for Conversational Emotion Recognition

Abstract

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.

Code Repositories

shenwzh3/DAG-ERC
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
emotion-recognition-in-conversation-onDAG-ERC
Weighted-F1: 68.03
emotion-recognition-in-conversation-on-3DAG-ERC
Micro-F1: 59.33
emotion-recognition-in-conversation-on-4DAG-ERC
Weighted-F1: 39.02
emotion-recognition-in-conversation-on-meldDAG-ERC
Weighted-F1: 63.65

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