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An Evaluation Dataset and Strategy for Building Robust Multi-turn Response Selection Model

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arxiv 2109.04834 v1 pith:MBLEQDKC submitted 2021-09-10 cs.CL cs.AI

An Evaluation Dataset and Strategy for Building Robust Multi-turn Response Selection Model

classification cs.CL cs.AI
keywords modelsresponsemulti-turnselectionweaknessesadversarialcontextdataset
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multi-turn response selection models have recently shown comparable performance to humans in several benchmark datasets. However, in the real environment, these models often have weaknesses, such as making incorrect predictions based heavily on superficial patterns without a comprehensive understanding of the context. For example, these models often give a high score to the wrong response candidate containing several keywords related to the context but using the inconsistent tense. In this study, we analyze the weaknesses of the open-domain Korean Multi-turn response selection models and publish an adversarial dataset to evaluate these weaknesses. We also suggest a strategy to build a robust model in this adversarial environment.

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