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Papers/Graph Based Network with Contextualized Representations of...

Graph Based Network with Contextualized Representations of Turns in Dialogue

Bongseok Lee, Yong Suk Choi

2021-09-09EMNLP 2021 11Emotion Recognition in ConversationRelation ExtractionNatural Language UnderstandingDialog Relation ExtractionEmotion Recognition
PaperPDFCode(official)

Abstract

Dialogue-based relation extraction (RE) aims to extract relation(s) between two arguments that appear in a dialogue. Because dialogues have the characteristics of high personal pronoun occurrences and low information density, and since most relational facts in dialogues are not supported by any single sentence, dialogue-based relation extraction requires a comprehensive understanding of dialogue. In this paper, we propose the TUrn COntext awaRE Graph Convolutional Network (TUCORE-GCN) modeled by paying attention to the way people understand dialogues. In addition, we propose a novel approach which treats the task of emotion recognition in conversations (ERC) as a dialogue-based RE. Experiments on a dialogue-based RE dataset and three ERC datasets demonstrate that our model is very effective in various dialogue-based natural language understanding tasks. In these experiments, TUCORE-GCN outperforms the state-of-the-art models on most of the benchmark datasets. Our code is available at https://github.com/BlackNoodle/TUCORE-GCN.

Results

TaskDatasetMetricValueModel
Relation ExtractionDialogREF1 (v2)73.1TUCORE-GCN_RoBERTa
Relation ExtractionDialogREF1c (v2)65.9TUCORE-GCN_RoBERTa
Relation ExtractionDialogREF1 (v2)65.5TUCORE-GCN_BERT
Relation ExtractionDialogREF1c (v2)60.2TUCORE-GCN_BERT
Emotion RecognitionEmoryNLPWeighted-F139.24TUCORE-GCN_RoBERTa
Emotion RecognitionEmoryNLPWeighted-F136.01TUCORE-GCN_BERT
Emotion RecognitionMELDWeighted-F165.36TUCORE-GCN_RoBERTa
Emotion RecognitionMELDWeighted-F162.47TUCORE-GCN_BERT
Emotion RecognitionDailyDialogMicro-F161.91TUCORE-GCN_RoBERTa
Emotion RecognitionDailyDialogMicro-F158.34TUCORE-GCN_BERT

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