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NSNLI

description

Is Neuro-Symbolic SOTA still a myth for Natural Language Inference?

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NSNLI

author

Website by Ishan Tarunesh, Somak Aditya

updated

2025-12-19 19:53:24

raw text

NSNLI NSNLI Call Speakers Schedule Resources TaxiNLI CheckList NSNLI Is Neuro-Symbolic SOTA still a myth for Natural Language Inference? The Workshop dates are up: Aug 21 (2PM – 8PM) UTC Montreal Morning, Aug 22 (6AM – 10AM) UTC Montreal Evening The ability to understand natural language has been a long-standing dream of the AI community. In the past decade, using representative tasks such as Natural Language Inference (NLI) and large publicly available datasets, the community has made impressive progress towards that goal using machine learning (especially deep learning) tecnhiques. Recently, various researchers showed how the state-of-the-art (SOTA) data-driven deep learning models are brittle, often generalize poorly, and rely on hidden patterns in the data than actually reason to derive the conclusion. While many analyses have traced the root cause of such behavior to shortcomings in public datasets, recent work (TaxiNLI, and CheckList) also showed th...

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