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  1. Elimination by aspects: A theory of choice.Amos Tversky - 1972 - Psychological Review 79 (4):281-299.
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  • Rational choice and the structure of the environment.Herbert A. Simon - 1956 - Psychological Review 63 (2):129-138.
  • How Forgetting Aids Heuristic Inference.Lael J. Schooler & Ralph Hertwig - 2005 - Psychological Review 112 (3):610-628.
    Some theorists, ranging from W. James to contemporary psychologists, have argued that forgetting is the key to proper functioning of memory. The authors elaborate on the notion of beneficial forgetting by proposing that loss of information aids inference heuristics that exploit mnemonic information. To this end, the authors bring together 2 research programs that take an ecological approach to studying cognition. Specifically, they implement fast and frugal heuristics within the ACT-R cognitive architecture. Simulations of the recognition heuristic, which relies on (...)
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  • Simple heuristics from the Adaptive Toolbox: Can we perform the requisite learning?Tim Rakow, Neal Hinvest, Edward Jackson & Martin Palmer - 2004 - Thinking and Reasoning 10 (1):1-29.
  • PROBabilities from EXemplars (PROBEX): a “lazy” algorithm for probabilistic inference from generic knowledge.Peter Juslin & Magnus Persson - 2002 - Cognitive Science 26 (5):563-607.
    PROBEX (PROBabilities from EXemplars), a model of probabilistic inference and probability judgment based on generic knowledge is presented. Its properties are that: (a) it provides an exemplar model satisfying bounded rationality; (b) it is a “lazy” algorithm that presumes no pre‐computed abstractions; (c) it implements a hybrid‐representation, similarity‐graded probability. We investigate the ecological rationality of PROBEX and find that it compares favorably with Take‐The‐Best and multiple regression (Gigerenzer, Todd, & the ABC Research Group, 1999). PROBEX is fitted to the point (...)
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  • Heuristic and linear models of judgment: Matching rules and environments.Robin M. Hogarth & Natalia Karelaia - 2007 - Psychological Review 114 (3):733-758.
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  • The Robust Beauty of Majority Rules in Group Decisions.Reid Hastie & Tatsuya Kameda - 2005 - Psychological Review 112 (2):494-508.
  • Models of ecological rationality: The recognition heuristic.Daniel G. Goldstein & Gerd Gigerenzer - 2002 - Psychological Review 109 (1):75-90.
    [Correction Notice: An erratum for this article was reported in Vol 109 of Psychological Review. Due to circumstances that were beyond the control of the authors, the studies reported in "Models of Ecological Rationality: The Recognition Heuristic," by Daniel G. Goldstein and Gerd Gigerenzer overlap with studies reported in "The Recognition Heuristic: How Ignorance Makes Us Smart," by the same authors and with studies reported in "Inference From Ignorance: The Recognition Heuristic". In addition, Figure 3 in the Psychological Review article (...)
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  • Probabilistic mental models: A Brunswikian theory of confidence.Gerd Gigerenzer, Ulrich Hoffrage & Heinz Kleinbölting - 1991 - Psychological Review 98 (4):506-528.
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  • Homo Heuristicus: Why Biased Minds Make Better Inferences.Gerd Gigerenzer & Henry Brighton - 2009 - Cognitive Science.
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  • Homo Heuristicus: Why Biased Minds Make Better Inferences.Gerd Gigerenzer & Henry Brighton - 2009 - Topics in Cognitive Science 1 (1):107-143.
    Heuristics are efficient cognitive processes that ignore information. In contrast to the widely held view that less processing reduces accuracy, the study of heuristics shows that less information, computation, and time can in fact improve accuracy. We review the major progress made so far: the discovery of less-is-more effects; the study of the ecological rationality of heuristics, which examines in which environments a given strategy succeeds or fails, and why; an advancement from vague labels to computational models of heuristics; the (...)
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  • Psychological plausibility of the theory of probabilistic mental models and the fast and frugal heuristics.Michael R. Dougherty, Ana M. Franco-Watkins & Rick Thomas - 2008 - Psychological Review 115 (1):199-211.
  • Postscript: Vague heuristics revisited.Michael R. Dougherty, Rick Thomas & Ana M. Franco-Watkins - 2008 - Psychological Review 115 (1):211-213.
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  • The robust beauty of improper linear models in decision making.Robyn M. Dawes - 1979 - American Psychologist 34 (7):571-582.
    Proper linear models are those in which predictor variables are given weights such that the resulting linear composite optimally predicts some criterion of interest; examples of proper linear models are standard regression analysis, discriminant function analysis, and ridge regression analysis. Research summarized in P. Meehl's book on clinical vs statistical prediction and research stimulated in part by that book indicate that when a numerical criterion variable is to be predicted from numerical predictor variables, proper linear models outperform clinical intuition. Improper (...)
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  • Fast, frugal, and rational: How rational norms explain behavior.Nick Chater, Mike Oaksford, Ramin Nakisa & Martin Redington - 2003 - Organizational Behavior and Human Decision Processes 90 (1):63-86.
    Much research on judgment and decision making has focussed on the adequacy of classical rationality as a description of human reasoning. But more recently it has been argued that classical rationality should also be rejected even as normative standards for human reasoning. For example, Gigerenzer and Goldstein and Gigerenzer and Todd argue that reasoning involves “fast and frugal” algorithms which are not justified by rational norms, but which succeed in the environment. They provide three lines of argument for this view, (...)
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  • Representative design and probabilistic theory in a functional psychology.Egon Brunswik - 1955 - Psychological Review 62 (3):193-217.
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  • Simple Heuristics That Make Us Smart.Gerd Gigerenzer, Peter M. Todd & A. B. C. Research Group - 1999 - New York, NY, USA: Oxford University Press USA. Edited by Peter M. Todd.
    Simple Heuristics That Make Us Smart invites readers to embark on a new journey into a land of rationality that differs from the familiar territory of cognitive science and economics. Traditional views of rationality tend to see decision makers as possessing superhuman powers of reason, limitless knowledge, and all of eternity in which to ponder choices. To understand decisions in the real world, we need a different, more psychologically plausible notion of rationality, and this book provides it. It is about (...)
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  • Simple heuristics from the adaptive toolbox: Can we perform the requisite learning?Dr Tim Rakow, Neal Hinvest, Edward Jackson & Martin Palmer - 2004 - Thinking and Reasoning 10 (1):1 – 29.
    The Adaptive Toolbox framework specifies heuristics for choice and categorisation that search through cues in previously learned orders (Gigerenzer & Todd, 1999). We examined the learning of three cue parameters defining different orders: discrimination rate (DR) (the probability that a cue points to a unique choice), validity (the probability of correct choice given that a cue discriminates), and success (the probability of correct choice). Success orderings are identical to those by expected information gain (Klayman & Ha, 1987). In two experiments, (...)
     
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