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From Rewriting to Remembering: Common Ground for Conversational QA Models

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arxiv 2204.03930 v1 pith:FWBGUQ2D submitted 2022-04-08 cs.CL

From Rewriting to Remembering: Common Ground for Conversational QA Models

classification cs.CL
keywords conversationalinformationapproachescommongroundmodelsrelevantrewriting
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In conversational QA, models have to leverage information in previous turns to answer upcoming questions. Current approaches, such as Question Rewriting, struggle to extract relevant information as the conversation unwinds. We introduce the Common Ground (CG), an approach to accumulate conversational information as it emerges and select the relevant information at every turn. We show that CG offers a more efficient and human-like way to exploit conversational information compared to existing approaches, leading to improvements on Open Domain Conversational QA.

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