• Title of article

    Similarity, feature discovery, and the size principle

  • Author/Authors

    Navarro، نويسنده , , Daniel J. and Perfors، نويسنده , , Amy F.، نويسنده ,

  • Issue Information
    ماهنامه با شماره پیاپی سال 2010
  • Pages
    13
  • From page
    256
  • To page
    268
  • Abstract
    In this paper we consider the “size principle” for featural similarity, which states that rare features should be weighted more heavily than common features in people’s evaluations of the similarity between two entities. Specifically, it predicts that if a feature is possessed by n objects, the expected weight scales according to a 1 / n law. One justification of the size principle emerges from a Bayesian analysis of simple induction problems (Tenenbaum & Griffiths, 2001), and is closely related to work by Shepard (1987) proposing universal laws for inductive generalization. In this article, we (1) show that the size principle can be more generally derived as an expression of a form of representational optimality, and (2) present analyses suggesting that across 11 different data sets in the domains of animals and artifacts, human judgments are in agreement with this law. A number of implications are discussed.
  • Keywords
    Feature discovery , Size principle , Bayesian inference , Similarity
  • Journal title
    Acta Psychologica
  • Serial Year
    2010
  • Journal title
    Acta Psychologica
  • Record number

    1904262