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Probing Commonsense Explanation in Dialogue Response Generation

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arxiv 2104.09574 v4 pith:2J6D3EZ6 submitted 2021-04-19 cs.CL cs.AIcs.LG

Probing Commonsense Explanation in Dialogue Response Generation

classification cs.CL cs.AIcs.LG
keywords commonsensemodelsresponsesprobingexplanationsreasoningcommunicationdialogue
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Humans use commonsense reasoning (CSR) implicitly to produce natural and coherent responses in conversations. Aiming to close the gap between current response generation (RG) models and human communication abilities, we want to understand why RG models respond as they do by probing RG model's understanding of commonsense reasoning that elicits proper responses. We formalize the problem by framing commonsense as a latent variable in the RG task and using explanations for responses as textual form of commonsense. We collect 6k annotated explanations justifying responses from four dialogue datasets and ask humans to verify them and propose two probing settings to evaluate RG models' CSR capabilities. Probing results show that models fail to capture the logical relations between commonsense explanations and responses and fine-tuning on in-domain data and increasing model sizes do not lead to understanding of CSR for RG. We hope our study motivates more research in making RG models emulate the human reasoning process in pursuit of smooth human-AI communication.

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