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  1. Comprehension and computation in Bayesian problem solving.Eric D. Johnson &Elisabet Tubau -2015 -Frontiers in Psychology 6:137658.
    Humans have long been characterized as poor probabilistic reasoners when presented with explicit numerical information. Bayesian word problems provide a well-known example of this, where even highly educated and cognitively skilled individuals fail to adhere to mathematical norms. It is widely agreed that natural frequencies can facilitate Bayesian reasoning relative to normalized formats (e.g. probabilities, percentages), both by clarifying logical set-subset relations and by simplifying numerical calculations. Nevertheless, between-study performance on “transparent” Bayesian problems varies widely, and generally remains rather unimpressive. (...) We suggest there has been an over-focus on this representational facilitator (i.e. transparent problem structures) at the expense of the specific logical and numerical processing requirements and the corresponding individual abilities and skills necessary for providing Bayesian-like output given specific verbal and numerical input. We further suggest that understanding this task-individual pair could benefit from considerations from the literature on mathematical cognition, which emphasizes text comprehension and problem solving, along with contributions of online executive working memory, metacognitive regulation, and relevant stored knowledge and skills. We conclude by offering avenues for future research aimed at identifying the stages in problem solving at which correct versus incorrect reasoners depart, and how individual difference might influence this time point. (shrink)
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  • Natural frequencies improve Bayesian reasoning in simple and complex inference tasks.Ulrich Hoffrage,Stefan Krauss,Laura Martignon &Gerd Gigerenzer -2015 -Frontiers in Psychology 6.
  • Evidencing How Experience and Problem Format Affect Probabilistic Reasoning Through Interaction Analysis.Manuele Reani,Alan Davies,Niels Peek &Caroline Jay -2019 -Frontiers in Psychology 10.
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  • Toward an ecological analysis of Bayesian inferences: how task characteristics influence responses.Sebastian Hafenbrädl &Ulrich Hoffrage -2015 -Frontiers in Psychology 6.
  • Elementary probabilistic operations: a framework for probabilistic reasoning.Siegfried Macho &Thomas Ledermann -2024 -Thinking and Reasoning 30 (2):259-300.
    The framework of elementary probabilistic operations (EPO) explains the structure of elementary probabilistic reasoning tasks as well as people’s performance on these tasks. The framework comprises three components: (a) Three types of probabilities: joint, marginal, and conditional probabilities; (b) three elementary probabilistic operations: combination, marginalization, and conditioning, and (c) quantitative inference schemas implementing the EPO. The formal part of the EPO framework is a computational level theory that provides a problem space representation and a classification of elementary probabilistic problems based (...) on computational requirements for solving a problem. According to the EPO framework, current methods for improving probabilistic reasoning are of two kinds: First, reduction of Bayesian problems to a type of probabilistic problems requiring less conceptual and procedural competencies. Second, enhancing people’s utilization competence by fostering the application of quantitative inference schemas. The approach suggests new applications, including the teaching of probabilistic reasoning, using analogical problem solving in probabilistic reasoning, and new methods for analyzing errors in probabilistic problem solving. (shrink)
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  • Editorial: Improving Bayesian Reasoning: What Works and Why?David R. Mandel &Gorka Navarrete -2015 -Frontiers in Psychology 6.
  • When intuitive Bayesians need to be good readers: The problem-wording effect on Bayesian reasoning.Miroslav Sirota,Gorka Navarrete &Marie Juanchich -2024 -Cognition 245 (C):105722.
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