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The Bayesian approach to the psychology of reasoning generalizes binary logic, extending the binary concept of consistency to that of coherence, and allowing the study of deductive reasoning from uncertain premises. Studies in judgment and decision making have found that people's probability judgments can fail to be coherent. We investigated people's coherence further for judgments about conjunctions, disjunctions and conditionals, and asked whether their coherence would increase when they were given the explicit task of drawing inferences. Participants gave confidence judgments about a list of separate statements (the statements group) or the statements grouped as explicit inferences (the inferences group). Their responses were generally coherent at above chance levels for all the inferences investigated, regardless of the presence of an explicit inference task. An exception was that they were incoherent in the context known to cause the conjunction fallacy, and remained so even when they were given an explicit inference. The participants were coherent under the assumption that they interpreted the natural language conditional as it is represented in Bayesian accounts of conditional reasoning, but they were incoherent under the assumption that they interpreted the natural language conditional as the material conditional of elementary binary logic. Our results provide further support for the descriptive adequacy of Bayesian reasoning principles in the study of deduction under uncertainty.
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http://dx.doi.org/10.3389/fpsyg.2015.00192 | DOI Listing |
Diagnosis (Berl)
September 2025
Research Division, Instituto Dante Pazzanese de Cardiologia, São Paulo, SP, Brazil.
Objectives: Diagnostic reasoning in clinical medicine is permeated by uncertainty. This study aims to analyze how errors in the estimation of pre-test probability affect the application of Bayesian inference in diagnostic reasoning.
Methods: We examined the propagation of pre-test probability misestimation through Bayes' Theorem, focusing on its interaction with different likelihood ratios and pre-test probabilities.
Diagnostics (Basel)
August 2025
Dermatology Unit, IRCCS Humanitas Research Hospital, Rozzano, 20089 Milano, Italy.
In recent decades, dermatological diagnostics have undergone a profound transformation, driven by the integration of new technologies alongside traditional methods. Classic techniques such as the Tzanck smear, potassium hydroxide (KOH) preparation, and Wood's lamp examination remain fundamental in everyday clinical practice due to their simplicity, speed, and accessibility. At the same time, the development of non-invasive imaging technologies and the application of artificial intelligence (AI) have opened new frontiers in the early detection and monitoring of both neoplastic and inflammatory skin diseases.
View Article and Find Full Text PDFJ Exp Psychol Gen
August 2025
Department of Microeconomics and Public Economics, School of Business and Economics, Maastricht University.
A prominent explanation for the proliferation of political misinformation and the growing belief polarization is that people engage in motivated reasoning to affirm their ideology and to protect their political identities. An alternative explanation is that people seek the truth but use partisanship as a heuristic to discern credible from dubious sources of political information. In three experiments, we test these competing explanations in a dynamic setting where participants are repeatedly exposed to messages from ingroup or outgroup partisan sources and can learn which source is reliable based on external feedback.
View Article and Find Full Text PDFArq Bras Cardiol
July 2025
Dom José Maria Pires Metropolitan Hospital, João Pessoa, PB - Brasil.
Cardiovascular medicine has witnessed remarkable breakthroughs, yet even highly regarded interventions can be undermined by flawed reasoning, excessive mechanistic assumptions, and the selective reporting of data. This article examines crucial pitfalls in contemporary cardiology, such as medical reversals, the impact of spin, and how bayesian methods can offer greater clarity in evaluating evidence, as they integrate prior knowledge with new data to generate more probabilistic, context-driven conclusions. This review advocates for a measured, critical approach to research appraisal, cautioning cardiologists against uncritically accepting trial conclusions at face value.
View Article and Find Full Text PDFCogn Sci
August 2025
Max Planck Institute for Astrophysics, Garching.
A large part of how people learn about their shared world is via social information. However, in complex modern information ecosystems, it can be challenging to identify deception or filter out misinformation. This challenge is exacerbated by the existence of a dual-learning problem whereby: (1) people draw inferences about the world, given new social information; and simultaneously (2), they draw inferences about how credible various sources of information are, given social cues and previous knowledge.
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