Publication | Closed Access
Investigating the Contribution of Distributional Semantic Information for Dialogue Act Classification
23
Citations
27
References
2014
Year
Unknown Venue
EngineeringSpoken Dialog SystemDialogue ActCommunicationSemanticsDistributional Semantic InformationCorpus LinguisticsText MiningSpeech RecognitionNatural Language ProcessingApplied LinguisticsSyntaxComputational LinguisticsConversation AnalysisLanguage StudiesMachine TranslationNatural LanguageDialogue ManagementNlp TaskDistributional SemanticsWord Vector CompositionSemantic ParsingSpeech CommunicationDialogue Act ClassificationDialogue Act SequenceLinguisticsPo Tagging
This paper presents a series of experiments in applying compositional distributional semantic models to dialogue act classification.In contrast to the widely used bag-ofwords approach, we build the meaning of an utterance from its parts by composing the distributional word vectors using vector addition and multiplication.We investigate the contribution of word sequence, dialogue act sequence, and distributional information to the performance, and compare with the current state of the art approaches.Our experiment suggests that that distributional information is useful for dialogue act tagging but that simple models of compositionality fail to capture crucial information from word and utterance sequence; more advanced approaches (e.g.sequence-or grammar-driven, such as categorical, word vector composition) are required.
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