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  • title: Towards Robustifying NLI Models Against Lexical Dataset Biases
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            Towards Robustifying NLI Models Against Lexical Dataset Biases
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            Towards Robustifying NLI Models Against Lexical Dataset Biases

            Jul 5, 2020

            Speakers

            XZ

            Xiang Zhou

            Speaker · 0 followers

            MB

            Mohit Bansal

            Speaker · 1 follower

            Organizer

            A2
            A2

            ACL 2020

            Account · 224 followers

            Categories

            AI & Data Science

            Category · 10.8k presentations

            About ACL 2020

            ACL is the premier conference of the field of computational linguistics, covering a broad spectrum of diverse research areas that are concerned with computational approaches to natural language.

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