Publication | Open Access
Automatic sense prediction for implicit discourse relations in text
287
Citations
20
References
2009
Year
Unknown Venue
EngineeringTextual EntailmentCorpus LinguisticsJournalismText MiningApplied LinguisticsNatural Language ProcessingSyntaxComputational LinguisticsDiscourse AnalysisLanguage StudiesImplicit Discourse RelationsNlp TaskPolarity TagsAutomatic Sense PredictionImplicit RelationsDistributional SemanticsSemantic ParsingDiscourse StructureLinguisticsWord-sense Disambiguation
We present a series of experiments on automatically identifying the sense of implicit discourse relations, i.e. relations that are not marked with a discourse connective such as "but" or "because". We work with a corpus of implicit relations present in newspaper text and report results on a test set that is representative of the naturally occurring distribution of senses. We use several linguistically informed features, including polarity tags, Levin verb classes, length of verb phrases, modality, context, and lexical features. In addition, we revisit past approaches using lexical pairs from unannotated text as features, explain some of their shortcomings and propose modifications. Our best combination of features outperforms the baseline from data intensive approaches by 4% for comparison and 16% for contingency.
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