2021
DOI: 10.48550/arxiv.2105.08008
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Supporting Context Monotonicity Abstractions in Neural NLI Models

Abstract: Natural language contexts display logical regularities with respect to substitutions of related concepts: these are captured in a functional order-theoretic property called monotonicity. For a certain class of NLI problems where the resulting entailment label depends only on the context monotonicity and the relation between the substituted concepts, we build on previous techniques that aim to improve the performance of NLI models for these problems, as consistent performance across both upward and downward mon… Show more

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