BiERU: Bidirectional Emotional Recurrent Unit for Conversational Sentiment Analysis

31 May 2020  ·  Wei Li, Wei Shao, Shaoxiong Ji, Erik Cambria ·

Sentiment analysis in conversations has gained increasing attention in recent years for the growing amount of applications it can serve, e.g., sentiment analysis, recommender systems, and human-robot interaction. The main difference between conversational sentiment analysis and single sentence sentiment analysis is the existence of context information which may influence the sentiment of an utterance in a dialogue. How to effectively encode contextual information in dialogues, however, remains a challenge. Existing approaches employ complicated deep learning structures to distinguish different parties in a conversation and then model the context information. In this paper, we propose a fast, compact and parameter-efficient party-ignorant framework named bidirectional emotional recurrent unit for conversational sentiment analysis. In our system, a generalized neural tensor block followed by a two-channel classifier is designed to perform context compositionality and sentiment classification, respectively. Extensive experiments on three standard datasets demonstrate that our model outperforms the state of the art in most cases.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Emotion Recognition in Conversation IEMOCAP BiERU-lc Weighted-F1 65.22 # 39
Emotion Recognition in Conversation MELD BiERU-lc Weighted-F1 60.84 # 45

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