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Intuitive expectations and the detection of mental disorder: A cognitive background to folk-psychiatries

  • Pascal Boyer

    Research output: Contribution to journalArticlepeer-review

    Abstract

    How do people detect mental dysfunction? What is the influence of cultural models of dysfunction on this detection process? The detection process as such is not usually researched as it falls between the domains of cross-cultural psychiatry (focusing on the dysfunction itself) and anthropological ethno-psychiatry (focusing on cultural models of sanity and madness). I provide a general model for this "missing link" between behavior and cultural models, grounded in empirical evidence for intuitive psychology. Normal adult minds entertain specific intuitive expectations about mental function and behavior, and by implication they infer that specific kinds of behavior are the result of underlying dysfunction. This suggests that there is a "catalogue" of possible behaviors that trigger that intuition, hence a limited catalogue of possible symptoms that feed into culturally specific folk-understandings of mental disorder. It also suggests that some mental dysfunctions, as they do not clearly violate principles of intuitive psychology, are "invisible" to folk-understandings. This perspective allows us to understand the cultural stability and spread of particular views of madness. It also suggests why certain types of mental disorder are invisible to folk-understandings.

    Original languageEnglish
    Pages (from-to)95-118
    Number of pages24
    JournalPhilosophical Psychology
    Volume24
    Issue number1
    DOIs
    StatePublished - Feb 2011

    Keywords

    • Cultural transmission
    • Ethno-psychiatry
    • Intuitive expectations
    • Mental dysfunction
    • Theory of mind

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