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Event Causality Identification via Generation of Important Context Words

Hieu Man, Minh Tho Nguyen, Thien Huu Nguyen

202227 citationsDOIOpen Access PDF

Abstract

An important problem of Information Extraction involves Event Causality Identification (ECI) that seeks to identify causal relation between pairs of event mentions. Prior models for ECI have mainly solved the problem using the classification framework that does not explore prediction/generation of important context words from input sentences for causal recognition. In this work, we consider the words along the dependency path between the two event mentions in the dependency tree as the important context words for ECI. We introduce dependency path generation as a complementary task for ECI, which can be solved jointly with causal label prediction to improve the performance. To facilitate the multi-task learning, we cast ECI into a generation problem that aims to generate both causal relation and dependency path words from input sentence. In addition, we propose to use the REIN-FORCE algorithm to train our generative model where novel reward functions are designed to capture both causal prediction accuracy and generation quality. The experiments on two benchmark datasets demonstrate state-of-theart performance of the proposed model for ECI.

Topics & Concepts

Computer scienceDependency (UML)Event (particle physics)Artificial intelligenceContext (archaeology)Path (computing)Causality (physics)Identification (biology)Relation (database)Generative grammarNatural language processingTask (project management)Benchmark (surveying)Generative modelSentenceMachine learningData miningQuantum mechanicsPaleontologyGeodesyBiologyProgramming languageEconomicsPhysicsGeographyManagementBotanyTopic ModelingData Quality and ManagementWeb Data Mining and Analysis