Publication | Open Access
Jointly identifying temporal relations with Markov Logic
139
Citations
11
References
2009
Year
Unknown Venue
EngineeringSemanticsSemantic WebCorpus LinguisticsSocial SciencesText MiningStatistical Relational LearningCausal Relation ExtractionNatural Language ProcessingTemporal RelationsProbability LogicData ScienceMarkov Logic ModelComputational LinguisticsTemporal DataTemporal LogicKnowledge DiscoveryComputer ScienceMarkov LogicInformation ExtractionAutomated ReasoningRelationship ExtractionFormal MethodsTemporal Relation Identification
Recent work on temporal relation identification has focused on three types of relations between events: temporal relations between an event and a time expression, between a pair of events and between an event and the document creation time. These types of relations have mostly been identified in isolation by event pairwise comparison. However, this approach neglects logical constraints between temporal relations of different types that we believe to be helpful. We therefore propose a Markov Logic model that jointly identifies relations of all three relation types simultaneously. By evaluating our model on the TempEval data we show that this approach leads to about 2% higher accuracy for all three types of relations ---and to the best results for the task when compared to those of other machine learning based systems.
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