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Towards Event-level Causal Relation Identification

Chuang Fan, Daoxing Liu, Libo Qin, Yue Zhang, Ruifeng Xu

2022Proceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval14 citationsDOI

Abstract

Existing methods usually identify causal relations between events at the mention-level, which takes each event mention pair as a separate input. As a result, they either suffer from conflicts among causal relations predicted separately or require a set of additional constraints to resolve such conflicts. We propose to study this task in a more realistic setting, where event-level causality identification can be made. The advantage is two folds: 1) with modeling different mentions of an event as a single unit, no more conflicts among predicted results, without any extra constraints; 2) with the use of diverse knowledge sources (e.g., co-occurrence and coreference relations), a rich graph-based event structure can be induced from the document for supporting event-level causal inference. Graph convolutional network is used to encode such structural information, which aims to capture the local and non-local dependencies among nodes. Results show that our model achieves the best performance under both mention- and event-level settings, outperforming a number of strong baselines by at least 2.8% on F1 score.

Topics & Concepts

CoreferenceComputer scienceEvent (particle physics)ENCODEInferenceIdentification (biology)Causality (physics)GraphCausal inferenceArtificial intelligenceTask (project management)Relation (database)Data miningSet (abstract data type)Theoretical computer scienceNatural language processingMachine learningResolution (logic)MathematicsEconometricsManagementQuantum mechanicsProgramming languageEconomicsChemistryBiochemistryGenePhysicsBiologyBotanyTopic ModelingAdvanced Graph Neural NetworksBayesian Modeling and Causal Inference
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