Flexible Acceptance Condition of Generics from a Probabilistic Viewpoint: Towards Formalization of the Semantics of Generics.

Soo Hyun Ryu, Wonsuk Yang, Jong C Park
Author Information
  1. Soo Hyun Ryu: School of Computing, Korea Advanced Institute of Science and Technology, Daejeon, Korea.
  2. Wonsuk Yang: School of Computing, Korea Advanced Institute of Science and Technology, Daejeon, Korea.
  3. Jong C Park: School of Computing, Korea Advanced Institute of Science and Technology, Daejeon, Korea. park@nlp.kaist.ac.kr. ORCID

Abstract

Formalization of the semantics of generics has been considered extremely challenging for their inherent vagueness and context-dependence that hinder a single fixed truth condition. The present study suggests a way to formalize the semantics of generics by constructing flexible acceptance conditions with comparative probabilities. Findings from our in-depth psycholinguistic experiment show that two comparative probabilities-cue validity and prevalence-indeed construct the flexible acceptance conditions for generics in a systematic manner that can be applied to a diverse types of generics: Acceptability of IS_A relational generics is mostly determined by prevalence without interaction with cue validity; feature-describing generics are endorsed acceptable with high cue validity, albeit mediated by prevalence; and acceptability of feature-describing generics with low cue validity is mostly determined by prevalence irrespective of cue validity. Such systematic patterns indicate a great potential for the formalization of the semantics of generics.

Keywords

References

  1. J Abnorm Psychol. 1951 Apr;46(2):245-54 [PMID: 14841006]
  2. Psychol Rev. 2019 Apr;126(3):395-436 [PMID: 30762385]
  3. Annu Rev Psychol. 2009;60:115-40 [PMID: 18631027]
  4. Front Psychol. 2020 Jul 03;11:1274 [PMID: 32719631]
  5. Cognition. 2009 Oct;113(1):14-25 [PMID: 19674739]
  6. Cognition. 2013 Mar;126(3):405-22 [PMID: 23291421]

Grants

  1. 2018-0-00582-002/Institute for Information and Communications Technology Promotion (KR)

MeSH Term

Humans
Semantics
Probability

Word Cloud

Created with Highcharts 10.0.0genericsvaliditysemanticscueprevalenceGenericsFormalizationconditionflexibleacceptanceconditionscomparativesystematicmostlydeterminedfeature-describingAcceptanceconsideredextremelychallenginginherentvaguenesscontext-dependencehindersinglefixedtruthpresentstudysuggestswayformalizeconstructingprobabilitiesFindingsin-depthpsycholinguisticexperimentshowtwoprobabilities-cueprevalence-indeedconstructmannercanapplieddiversetypesgenerics:AcceptabilityIS_ArelationalwithoutinteractionendorsedacceptablehighalbeitmediatedacceptabilitylowirrespectivepatternsindicategreatpotentialformalizationFlexibleConditionProbabilisticViewpoint:TowardsSemanticsFormalGeneralization

Similar Articles

Cited By