2020
DOI: 10.48550/arxiv.2006.03002
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Linguists Who Use Probabilistic Models Love Them: Quantification in Functional Distributional Semantics

Abstract: Functional Distributional Semantics provides a computationally tractable framework for learning truth-conditional semantics from a corpus. Previous work in this framework has provided a probabilistic version of first-order logic, recasting quantification as Bayesian inference. In this paper, I show how the previous formulation gives trivial truth values when a precise quantifier is used with vague predicates. I propose an improved account, avoiding this problem by treating a vague predicate as a distribution o… Show more

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