4.5 Article

When Redundancy Is Useful: A Bayesian Approach to Overinformative Referring Expressions

Journal

PSYCHOLOGICAL REVIEW
Volume 127, Issue 4, Pages 591-621

Publisher

AMER PSYCHOLOGICAL ASSOC
DOI: 10.1037/rev0000186

Keywords

language production; reference; overinformativeness; experimental pragmatics; Bayesian modeling

Funding

  1. Office of Naval Research [N0001413-1-0788, N00014-13-10341]
  2. Stanford Graduate Fellowship
  3. National Science Foundation Graduate Research Fellowship [DGE-114747]

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Referring is one of the most basic and prevalent uses of language. How do speakers choose from the wealth of referring expressions at their disposal? Rational theories of language use have come under attack for decades for not being able to account for the seemingly irrational overinformativeness ubiquitous in referring expressions. Here we present a novel production model of referring expressions within the Rational Speech Act framework that treats speakers as agents that rationally trade off cost and informativeness of utterances. Crucially, we relax the assumption that informativeness is computed with respect to a deterministic Boolean semantics, in favor of a nondeterministic continuous semantics. This innovation allows us to capture a large number of seemingly disparate phenomena within one unified framework: the basic asymmetry in speakers' propensity to overmodify with color rather than size; the increase in overmoditication in complex scenes; the increase in overmodification with atypical features; and the increase in specificity in nominal reference as a function of typicality. These findings cast a new light on the production of referring expressions: rather than being wastefully overinformative, reference is usefully redundant.

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