Literature DB >> 19210833

Précis of bayesian rationality: The probabilistic approach to human reasoning.

Mike Oaksford1, Nick Chater.   

Abstract

According to Aristotle, humans are the rational animal. The borderline between rationality and irrationality is fundamental to many aspects of human life including the law, mental health, and language interpretation. But what is it to be rational? One answer, deeply embedded in the Western intellectual tradition since ancient Greece, is that rationality concerns reasoning according to the rules of logic--the formal theory that specifies the inferential connections that hold with certainty between propositions. Piaget viewed logical reasoning as defining the end-point of cognitive development; and contemporary psychology of reasoning has focussed on comparing human reasoning against logical standards. Bayesian Rationality argues that rationality is defined instead by the ability to reason about uncertainty. Although people are typically poor at numerical reasoning about probability, human thought is sensitive to subtle patterns of qualitative Bayesian, probabilistic reasoning. In Chapters 1-4 of Bayesian Rationality (Oaksford & Chater 2007), the case is made that cognition in general, and human everyday reasoning in particular, is best viewed as solving probabilistic, rather than logical, inference problems. In Chapters 5-7 the psychology of "deductive" reasoning is tackled head-on: It is argued that purportedly "logical" reasoning problems, revealing apparently irrational behaviour, are better understood from a probabilistic point of view. Data from conditional reasoning, Wason's selection task, and syllogistic inference are captured by recasting these problems probabilistically. The probabilistic approach makes a variety of novel predictions which have been experimentally confirmed. The book considers the implications of this work, and the wider "probabilistic turn" in cognitive science and artificial intelligence, for understanding human rationality.

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Year:  2009        PMID: 19210833     DOI: 10.1017/S0140525X09000284

Source DB:  PubMed          Journal:  Behav Brain Sci        ISSN: 0140-525X            Impact factor:   12.579


  76 in total

1.  Assessing semantic coherence in conditional probability estimates.

Authors:  Christopher R Fisher; Christopher R Wolfe
Journal:  Behav Res Methods       Date:  2011-12

2.  The consistency of disjunctive assertions.

Authors:  P N Johnson-Laird; Max Lotstein; Ruth M J Byrne
Journal:  Mem Cognit       Date:  2012-07

Review 3.  Mental models and human reasoning.

Authors:  Philip N Johnson-Laird
Journal:  Proc Natl Acad Sci U S A       Date:  2010-10-18       Impact factor: 11.205

4.  Broadening the study of inductive reasoning: confirmation judgments with uncertain evidence.

Authors:  Tommaso Mastropasqua; Vincenzo Crupi; Katya Tentori
Journal:  Mem Cognit       Date:  2010-10

5.  Significance testing as perverse probabilistic reasoning.

Authors:  M Brandon Westover; Kenneth D Westover; Matt T Bianchi
Journal:  BMC Med       Date:  2011-02-28       Impact factor: 8.775

6.  A successive-conditionalization approach to disjunctive and syllogistic reasoning.

Authors:  In-Mao Liu; Ting-Hsi Chou
Journal:  Psychol Res       Date:  2011-07-15

7.  Tuning your priors to the world.

Authors:  Jacob Feldman
Journal:  Top Cogn Sci       Date:  2013-01

8.  Homo artefaciens.

Authors:  Ladislav Kováč
Journal:  EMBO Rep       Date:  2013-05-17       Impact factor: 8.807

9.  Challenging the classical notion of time in cognition: a quantum perspective.

Authors:  James M Yearsley; Emmanuel M Pothos
Journal:  Proc Biol Sci       Date:  2014-03-05       Impact factor: 5.349

10.  Model-based cognitive neuroscience.

Authors:  Thomas J Palmeri; Bradley C Love; Brandon M Turner
Journal:  J Math Psychol       Date:  2016-11-23       Impact factor: 2.223

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