Publication | Closed Access
Dynamic, Non-Local Role Bindings and Inferencing in a Localist Network for Natural Language Understanding
14
Citations
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References
1988
Year
Syntactic ParsingSemantic Role LabelingCommunicationSemanticsLanguage LearningCorpus LinguisticsNatural Language ProcessingApplied LinguisticsSyntaxComputational LinguisticsLanguage EngineeringGrammarLanguage StudiesMachine TranslationNatural LanguageRole BindingLocalist Network ModelNlp TaskSemantic InterpretationCritical ProblemSemantic ParsingNon-local Role BindingsNatural Language UnderstandingLocalist NetworkArtsLinguisticsSemantic Representation
This paper introduces a means to handle the critical problem of nonlocal role-bindings in localist spreading-activation networks. Every conceptual node in the network broadcasts a stable, uniquely-identifying activation pattern, called its signature. A dynamic role-binding is created when a role's binding node has an activation that matches the bound concept's signature. Most importantly, signatures are propagated across long paths of nodes to handle the non-local role-bindings necessary for inferencing. Our localist network model, ROBIN (ROle Binding and Inferencing Network), uses signature activations to robustly represent schemata role-bindings and thus perform the inferencing, plan/goal analysis, schema instantiation, word-sense disambiguation, and dynamic re-interpretation portions of the natural language understanding process.
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