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Open-Retrieval Conversational Question Answering

Chen Qu, Liu Yang, Cen Chen, Minghui Qiu, W. Bruce Croft, Mohit Iyyer

202077 citationsDOIOpen Access PDF

Abstract

Conversational search is one of the ultimate goals of information retrieval. Recent research approaches conversational search by simplified settings of response ranking and conversational question answering, where an answer is either selected from a given candidate set or extracted from a given passage. These simplifications neglect the fundamental role of retrieval in conversational search. To address this limitation, we introduce an open-retrieval conversational question answering (ORConvQA) setting, where we learn to retrieve evidence from a large collection before extracting answers, as a further step towards building functional conversational search systems. We create a dataset, OR-QuAC, to facilitate research on ORConvQA. We build an end-to-end system for ORConvQA, featuring a retriever, a reranker, and a reader that are all based on Transformers. Our extensive experiments on OR-QuAC demonstrate that a learnable retriever is crucial for ORConvQA. We further show that our system can make a substantial improvement when we enable history modeling in all system components. Moreover, we show that the reranker component contributes to the model performance by providing a regularization effect. Finally, further in-depth analyses are performed to provide new insights into ORConvQA.

Topics & Concepts

Question answeringComputer scienceSet (abstract data type)Component (thermodynamics)Ranking (information retrieval)Artificial intelligenceInformation retrievalNatural language processingNatural languageNatural language understandingLanguage modelNeglectRegularization (linguistics)Human–computer interactionData collectionTopic ModelingNatural Language Processing TechniquesSpeech and dialogue systems