Emotion-cause pair extraction method based on multi-granularity information and multi-module interaction
Mingrui Fu, Weijiang Li

TL;DR
This paper introduces an end-to-end multitasking model, MM-ECPE, that leverages shared interactions and a novel encoding scheme to improve emotion-cause pair extraction, especially for imbalanced samples.
Contribution
The paper proposes a multi-module interaction model combining GRU, knowledge graph, and transformer, along with a BERT-based encoding to address imbalanced data and task interaction issues in emotion-cause pair extraction.
Findings
Achieves improved performance on ECPE benchmark dataset.
Effectively handles position-imbalanced samples.
Models shared information between emotion and cause extraction tasks.
Abstract
The purpose of emotion-cause pair extraction is to extract the pair of emotion clauses and cause clauses. On the one hand, the existing methods do not take fully into account the relationship between the emotion extraction of two auxiliary tasks. On the other hand, the existing two-stage model has the problem of error propagation. In addition, existing models do not adequately address the emotion and cause-induced locational imbalance of samples. To solve these problems, an end-to-end multitasking model (MM-ECPE) based on shared interaction between GRU, knowledge graph and transformer modules is proposed. Furthermore, based on MM-ECPE, in order to use the encoder layer to better solve the problem of imbalanced distribution of clause distances between clauses and emotion clauses, we propose a novel encoding based on BERT, sentiment lexicon, and position-aware interaction module layer of…
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Taxonomy
TopicsEvaluation Methods in Various Fields · Traditional Chinese Medicine Studies · Advanced Computing and Algorithms
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Attention Is All You Need · Softmax · WordPiece · Weight Decay · Linear Layer · Layer Normalization · Dense Connections · Attention Dropout · Residual Connection
