Abstract

Emotion-cause pair extraction aims to extract all emotion clauses coupled with their cause clauses from a given document. Previous work employs two-step approaches, in which the first step extracts emotion clauses and cause clauses separately, and the second step trains a classifier to filter out negative pairs. However, such pipeline-style system for emotion-cause pair extraction is suboptimal because it suffers from error propagation and the two steps may not adapt to each other well. In this paper, we tackle emotion-cause pair extraction from a ranking perspective, i.e., ranking clause pair candidates in a document, and propose a one-step neural approach which emphasizes inter-clause modeling to perform end-to-end extraction. It models the interrelations between the clauses in a document to learn clause representations with graph attention, and enhances clause pair representations with kernel-based relative position embedding for effective ranking. Experimental results show that our approach significantly outperforms the current two-step systems, especially in the condition of extracting multiple pairs in one document.

Highlights

  • Emotion cause analysis has attracted increasing research attention in sentiment analysis and text mining community in recent years (Lee et al, 2010a; Russo et al, 2011; Neviarouskaya and Aono, 2013; Ghazi et al, 2015; Gui et al, 2016)

  • Xia and Ding (2019) pointed out that this setting ignores the mutual indication of emotions and causes, and the need of emotion annotation in advance restricts the range of applications. They put forward a new research task named emotion-cause pair extraction, aiming to extract all emotion expression clauses coupled with their causes from a given document

  • Comparing to INTEREC, RANKCP achieves 8.43% and 6.60% improvements on emotion-cause pair extraction and cause clause extraction respectively, which indicates that our one-step solution can effectively extract more correct emotion-cause pairs without hurting the precision P

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Summary

Introduction

Emotion cause analysis has attracted increasing research attention in sentiment analysis and text mining community in recent years (Lee et al, 2010a; Russo et al, 2011; Neviarouskaya and Aono, 2013; Ghazi et al, 2015; Gui et al, 2016). Xia and Ding (2019) pointed out that this setting ignores the mutual indication of emotions and causes, and the need of emotion annotation in advance restricts the range of applications. To overcome such limitations, they put forward a new research task named emotion-cause pair extraction, aiming to extract all emotion expression clauses coupled with their causes from a given document. An emotion clause c3 and its corresponding cause clause c2 construct an emotion-cause pair (c3, c2): Example He told us that since his illness (c1), his classmates and advisors have given him much help about the schoolwork (c2). He has been touched (c3), and said that he will repay them (c4)

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