Literature DB >> 18927024

Putting the psychology back into psychological models: mechanistic versus rational approaches.

Yasuaki Sakamoto1, Mattr Jones, Bradley C Love.   

Abstract

Two basic approaches to explaining the nature of the mind are the rational and the mechanistic approaches. Rational analyses attempt to characterize the environment and the behavioral outcomes that humans seek to optimize, whereas mechanistic models attempt to simulate human behavior using processes and representations analogous to those used by humans. We compared these approaches with regard to their accounts of how humans learn the variability of categories. The mechanistic model departs in subtle ways from rational principles. In particular, the mechanistic model incrementally updates its estimates of category means and variances through error-driven learning, based on discrepancies between new category members and the current representation of each category. The model yields a prediction, which we verify, regarding the effects of order manipulations that the rational approach does not anticipate. Although both rational and mechanistic models can successfully postdict known findings, we suggest that psychological advances are driven primarily by consideration of process and representation and that rational accounts trail these breakthroughs.

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Mesh:

Year:  2008        PMID: 18927024     DOI: 10.3758/MC.36.6.1057

Source DB:  PubMed          Journal:  Mem Cognit        ISSN: 0090-502X


  17 in total

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  12 in total

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7.  Bayesian learning and the psychology of rule induction.

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9.  Learning to represent a multi-context environment: more than detecting changes.

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10.  Learning time-varying categories.

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