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  1. 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 (...)
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  • The Effects of Working Memory and Probability Format on Bayesian Reasoning.Lin Yin, Zifu Shi, Zixiang Liao, Ting Tang, Yuntian Xie & Shun Peng - 2020 - Frontiers in Psychology 11.
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  • An Eye-Tracking Study of Statistical Reasoning With Tree Diagrams and 2 × 2 Tables.Georg Bruckmaier, Karin Binder, Stefan Krauss & Han-Min Kufner - 2019 - Frontiers in Psychology 10:436373.
    Changing the information format from probabilities into frequencies as well as employing appropriate visualizations such as tree diagrams or 2 × 2 tables are important tools that can facilitate people’s statistical reasoning. Previous studies have shown that despite their widespread use in statistical textbooks, both of those visualization types are only of restricted help when they are provided with probabilities, but that they can foster insight when presented with frequencies instead. In the present study, we attempt to replicate this effect (...)
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  • Why can it be so hard to solve Bayesian problems? Moving from number comprehension to relational reasoning demands.Elisabet Tubau - 2022 - Thinking and Reasoning 28 (4):605-624.
    Over the last decades, understanding the sources of the difficulty of Bayesian problem solving has been an important research goal, with the effects of numerical format and individual numeracy being widely studied. However, the focus on the comprehension of probability numbers has overshadowed the relational reasoning demand of the Bayesian task. This is particularly the case when the statistical data are verbally described since the requested quantitative relation (posterior ratio) is misaligned with the presented ones (prior and likelihood ratios). In (...)
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  • Tversky and Kahneman’s Cognitive Illusions: Who Can Solve Them, and Why?Georg Bruckmaier, Stefan Krauss, Karin Binder, Sven Hilbert & Martin Brunner - 2021 - Frontiers in Psychology 12:584689.
    In the present paper we empirically investigate the psychometric properties of some of the most famous statistical and logical cognitive illusions from the “heuristics and biases” research program by Daniel Kahneman and Amos Tversky, who nearly 50 years ago introduced fascinating brain teasers such as the famous Linda problem, the Wason card selection task, and so-called Bayesian reasoning problems (e.g., the mammography task). In the meantime, a great number of articles has been published that empirically examine single cognitive illusions, theoretically (...)
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  • Are Jurors Intuitive Statisticians? Bayesian Causal Reasoning in Legal Contexts.Tamara Shengelia & David Lagnado - 2021 - Frontiers in Psychology 11.
    In criminal trials, evidence often involves a degree of uncertainty and decision-making includes moving from the initial presumption of innocence to inference about guilt based on that evidence. The jurors’ ability to combine evidence and make accurate intuitive probabilistic judgments underpins this process. Previous research has shown that errors in probabilistic reasoning can be explained by a misalignment of the evidence presented with the intuitive causal models that people construct. This has been explored in abstract and context-free situations. However, less (...)
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  • Processing Probability Information in Nonnumerical Settings – Teachers’ Bayesian and Non-bayesian Strategies During Diagnostic Judgment.Timo Leuders & Katharina Loibl - 2020 - Frontiers in Psychology 11.
    A diagnostic judgment of a teacher can be seen as an inference from manifest observable evidence on a student’s behavior to his or her latent traits. This can be described by a Bayesian model of in-ference: The teacher starts from a set of assumptions on the student (hypotheses), with subjective probabilities for each hypothesis (priors). Subsequently, he or she uses observed evidence (stu-dents’ responses to tasks) and knowledge on conditional probabilities of this evidence (likelihoods) to revise these assumptions. Many systematic (...)
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  • A New Visualization for Probabilistic Situations Containing Two Binary Events: The Frequency Net.Karin Binder, Stefan Krauss & Patrick Wiesner - 2020 - Frontiers in Psychology 11:506040.
    In teaching statistics in secondary schools and at university, two visualizations are primarily used when situations with two dichotomous characteristics are represented: 2×2 tables and tree diagrams. Both visualizations can be depicted either with probabilities or with frequencies. Visualizations with frequencies have been shown to help students significantly more in Bayesian reasoning problems than probability visualizations do. Because tree diagrams or double-trees (which are largely unknown in school) are node-branch-structures, these two visualizations (compared to the 2×2 table) can even simultaneously (...)
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  • Perspectives on the 2 × 2 Matrix: Solving Semantically Distinct Problems Based on a Shared Structure of Binary Contingencies. [REVIEW]Hansjörg Neth, Nico Gradwohl, Dirk Streeb, Daniel A. Keim & Wolfgang Gaissmaier - 2021 - Frontiers in Psychology 11:567817.
    Cognition is both empowered and limited by representations. The matrix lens model explicates tasks that are based on frequency counts, conditional probabilities, and binary contingencies in a general fashion. Based on a structural analysis of such tasks, the model links several problems and semantic domains and provides a new perspective on representational accounts of cognition that recognizes representational isomorphs as opportunities, rather than as problems. The shared structural construct of a 2 × 2 matrix supports a set of generic tasks (...)
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  • Different Visualizations Cause Different Strategies When Dealing With Bayesian Situations.Andreas Eichler, Katharina Böcherer-Linder & Markus Vogel - 2020 - Frontiers in Psychology 11:506184.
    People often struggle with Bayesian reasoning. However, research showed that people’s performance (and rationality) can be supported by the way of representing the statistical information. First, research showed that using natural frequencies instead of probabilities as format of statistical information increases people’s performance in Bayesian situations thoroughly. Second, research also yielded that people’s performance increases through using visualization. We build our paper on existing research in this field. The main aim is to analyse people’s strategies in Bayesian situations that are (...)
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  • 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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