Publication | Open Access
In Search of Conversational Grain Size: Modeling Semantic Structure using Moving Stanza Windows
163
Citations
20
References
2017
Year
EngineeringSpoken Dialog SystemMoving Stanza WindowsCommunicationSemanticsCorpus LinguisticsText MiningConnected LanguageApplied LinguisticsNatural Language ProcessingText SegmentationComputational LinguisticsLanguage EngineeringConversation AnalysisDiscourse AnalysisTemporal SegmentationLanguage StudiesInteractional LinguisticsMachine TranslationDialogue ManagementTemporal Segmentation MethodNlp TaskLanguage TechnologyConversation-based Segmentation MethodSpeech CommunicationDiscourse StructureConversational Grain SizeModeling Semantic StructureLinguistics
Analyses of learning based on student discourse need to account not only for the content of the utterances but also for the ways in which students make connections across turns of talk. This requires segmentation of discourse data to define when connections are likely to be meaningful. In this paper, we present an approach to segmenting data for the purposes of modeling connections in discourse using epistemic network analysis. Specifically, we use epistemic network analysis to model connections in student discourse using a temporal segmentation method adapted from recent work in the learning sciences. We compare the results of this study to a purely conversation-based segmentation method to examine the affordances of temporal segmentation for modeling connections in discourse.
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