RESOLVING ABSTRACT ANAPHORIC REFERENCES IN CONVERSATIONAL SYSTEMS USING HIERARCHICALLY STACKED NEURAL NETWORKS

Conversational systems are required to be capable of handling more sophisticated interactions than providing factual answers only. Such interactions are handled by resolving abstract anaphoric references in conversational systems which includes antecedent fact references and posterior fact reference...

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Hauptverfasser: AGARWAL, Puneet, SHROFF, Gautam, VIG, Lovekesh, KHURANA, Prerna
Format: Patent
Sprache:eng ; fre ; ger
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Zusammenfassung:Conversational systems are required to be capable of handling more sophisticated interactions than providing factual answers only. Such interactions are handled by resolving abstract anaphoric references in conversational systems which includes antecedent fact references and posterior fact references. The present disclosure resolves abstract anaphoric references in conversational systems using hierarchically stacked neural networks. In the present disclosure, a deep hierarchical maxpool network based model is used to obtain a representation of each utterance received from users and a representation of one or more generated sequences of utterances. The obtained representations are further used to identify contextual dependencies with in the one or more generated sequences which helps in resolving abstract anaphoric references in conversational systems. Further, a response for an incoming sequence of utterances is retrieved based on classification of incoming sequence of utterances into one or more pre-created responses. The proposed model takes lesser time to retrain.