Results for 'Bayesian reasoning'

990 found
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  1.  31
    Bayesian reasoning in avalanche terrain: a theoretical investigation.Philip A. Ebert - 2019 - Journal of Adventure Education and Outdoor Learning 19 (1):84-95.
    In this article, I explore a Bayesian approach to avalanche decision-making. I motivate this perspective by highlighting a version of the base-rate fallacy and show that a similar pattern applies to decision-making in avalanche-terrain. I then draw out three theoretical lessons from adopting a Bayesian approach and discuss these lessons critically. Lastly, I highlight a number of challenges for avalanche educators when incorporating the Bayesian perspective in their curriculum.
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  2. Bayesian reasoning.Timothy McGrew - manuscript
    This brief annotated bibliography is intended to help students get started with their research. It is not a substitute for personal investigation of the literature, and it is not a comprehensive bibliography on the subject. For those just beginning to study Bayesian reasoning, I suggest the starred items as good places to start your reading.
     
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  3.  31
    Bayesian reasoning with emotional material in patients with schizophrenia.Verónica Romero-Ferreiro, Rosario Susi, Eva M. Sánchez-Morla, Paloma Marí-Beffa, Pablo Rodríguez-Gómez, Julia Amador, Eva M. Moreno, Carmen Romero, Natalia Martínez-García & Roberto Rodriguez-Jimenez - 2022 - Frontiers in Psychology 13.
    Delusions are one of the most classical symptoms described in schizophrenia. However, despite delusions are often emotionally charged, they have been investigated using tasks involving non-affective material, such as the Beads task. In this study we compared 30 patients with schizophrenia experiencing delusions with 32 matched controls in their pattern of responses to two versions of the Beads task within a Bayesian framework. The two versions of the Beads task consisted of one emotional and one neutral, both with ratios (...)
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  4. Bayesian reasoning in science.C. Howson & P. Urbach - 1991 - Nature 350 (6317):371--374.
     
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  5.  38
    Bayesian reasoning with ifs and ands and ors.Nicole Cruz, Jean Baratgin, Mike Oaksford & David E. Over - 2015 - Frontiers in Psychology 6.
  6.  43
    Corrigendum: Bayesian reasoning with ifs and ands and ors.Nicole Cruz, Jean Baratgin, Mike Oaksford & David E. Over - 2015 - Frontiers in Psychology 6.
  7.  40
    Teaching Bayesian reasoning in less than two hours.Peter Sedlmeier & Gerd Gigerenzer - 2001 - Journal of Experimental Psychology: General 130 (3):380.
  8.  18
    How to improve Bayesian reasoning: Comment on Gigerenzer and Hoffrage (1995).Barbara A. Mellers & A. Peter McGraw - 1999 - Psychological Review 106 (2):417-424.
  9.  77
    How to improve Bayesian reasoning without instruction: Frequency formats.Gerd Gigerenzer & Ulrich Hoffrage - 1995 - Psychological Review 102 (4):684-704.
  10. Probabilistic confirmation theory and bayesian reasoning.Timothy McGrew - manuscript
    This brief annotated bibliography is intended to help students get started with their research. It is not a substitute for personal investigation of the literature, and it is not a comprehensive bibliography on the subject. For those just beginning to study probabilistic confirmation theory and Bayesian reasoning, I suggest the starred items as good places to start your reading.
     
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  11.  19
    On the difficulties underlying Bayesian reasoning: A comment on Gigerenzer and Hoffrage.Charles Lewis & Gideon Keren - 1999 - Psychological Review 106 (2):411-416.
  12.  44
    Rarity, pseudodiagnosticity and Bayesian reasoning.Simon Venn, Jonathan Evans & Aidan Feeney - 2008 - Thinking and Reasoning 14 (3):209-230.
    Three experiments investigated the effect of rarity on people's selection and interpretation of data in a variant of the pseudodiagnosticity task. For familiar (Experiment 1) but not for arbitrary (Experiment 3) materials, participants were more likely to select evidence so as to complete a likelihood ratio when the initial evidence they received was a single likelihood concerning a rare feature. This rarity effect with familiar materials was replicated in Experiment 2 where it was shown that participants were relatively insensitive to (...)
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  13.  23
    Overcoming difficulties in Bayesian reasoning: A reply to Lewis and Keren (1999) and Mellers and McGraw (1999).Gerd Gigerenzer & Ulrich Hoffrage - 1999 - Psychological Review 106 (2):425-430.
  14.  42
    The Scope of Bayesian Reasoning.Henry Kyburg - 1992 - PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association 1992:139 - 152.
    The Bayesian view of inference has become popular in philosophy in recent years. Scientific Reasoning: a Bayesian Approach, by Colin Howson and Peter Urbach, represents an articulate and persuasive defense of the Bayesian view. We focus on the theme of that book, and argue that there are difficulties with Bayesianism, and alternatives worth considering. One of the most serious drawbacks to Bayesianism is the subjectivity that pervades most versions of it. We argue that this is an (...)
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  15.  51
    Natural frequencies improve Bayesian reasoning in simple and complex inference tasks.Ulrich Hoffrage, Stefan Krauss, Laura Martignon & Gerd Gigerenzer - 2015 - Frontiers in Psychology 6.
  16.  33
    Why Can Only 24% Solve Bayesian Reasoning Problems in Natural Frequencies: Frequency Phobia in Spite of Probability Blindness.Patrick Weber, Karin Binder & Stefan Krauss - 2018 - Frontiers in Psychology 9:375246.
    For more than 20 years, research has proven the beneficial effect of natural frequencies when it comes to solving Bayesian reasoning tasks (Gigerenzer & Hoffrage, 1995). In a recent meta-analysis, McDowell & Jacobs (2017) showed that presenting a task in natural frequency format increases performance rates to 24% compared to only 4% when the same task is presented in probability format. Nevertheless, on average three quarters of participants in their meta-analysis failed to obtain the correct solution for such (...)
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  17.  45
    Reasoning and choice in the Monty Hall Dilemma (MHD): implications for improving Bayesian reasoning.Elisabet Tubau, David Aguilar-Lleyda & Eric D. Johnson - 2015 - Frontiers in Psychology 6:133474.
    The Monty Hall Dilemma (MHD) is a two-step decision problem involving counterintuitive conditional probabilities. The first choice is made among three equally probable options, whereas the second choice takes place after the elimination of one of the non-selected options which does not hide the prize. Differing from most Bayesian problems, statistical information in the MHD has to be inferred, either by learning outcome probabilities or by reasoning from the presented sequence of events. This often leads to suboptimal decisions (...)
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  18.  47
    Good fences make for good neighbors but bad science: a review of what improves Bayesian reasoning and why. [REVIEW]Gary L. Brase & W. Trey Hill - 2015 - Frontiers in Psychology 6:133410.
    Bayesian reasoning, defined here as the updating of a posterior probability following new information, has historically been problematic for humans. Classic psychology experiments have tested human Bayesian reasoning through the use of word problems and have evaluated each participant’s performance against the normatively correct answer provided by Bayes’ theorem. The standard finding is of generally poor performance. Over the past two decades, though, progress has been made on how to improve Bayesian reasoning. Most notably, (...)
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  19.  9
    Reference Dependence in Bayesian Reasoning: Value Selection Bias, Congruence Effects, and Response Prompt Sensitivity.Alaina Talboy & Sandra Schneider - 2022 - Frontiers in Psychology 13.
    This work examines the influence of reference dependence, including value selection bias and congruence effects, on diagnostic reasoning. Across two studies, we explored how dependence on the initial problem structure influences the ability to solve simplified precursors to the more traditional Bayesian reasoning problems. Analyses evaluated accuracy and types of response errors as a function of congruence between the problem presentation and question of interest, amount of information, need for computation, and individual differences in numerical abilities. Across (...)
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  20.  68
    Children's causal inferences from indirect evidence: Backwards blocking and Bayesian reasoning in preschoolers.D. Sobel - 2004 - Cognitive Science 28 (3):303-333.
    Previous research suggests that children can infer causal relations from patterns of events. However, what appear to be cases of causal inference may simply reduce to children recognizing relevant associations among events, and responding based on those associations. To examine this claim, in Experiments 1 and 2, children were introduced to a “blicket detector,” a machine that lit up and played music when certain objects were placed upon it. Children observed patterns of contingency between objects and the machine's activation that (...)
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  21. Scientific reasoning: the Bayesian approach.Peter Urbach & Colin Howson - 1993 - Chicago: Open Court. Edited by Peter Urbach.
    Scientific reasoning is—and ought to be—conducted in accordance with the axioms of probability. This Bayesian view—so called because of the central role it accords to a theorem first proved by Thomas Bayes in the late eighteenth ...
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  22.  23
    Editorial: Improving Bayesian Reasoning: What Works and Why?David R. Mandel & Gorka Navarrete - 2015 - Frontiers in Psychology 6.
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  23.  55
    Children's causal inferences from indirect evidence: Backwards blocking and Bayesian reasoning in preschoolers.Alison Gopnik - 2004 - Cognitive Science 28 (3):303-333.
    Previous research suggests that children can infer causal relations from patterns of events. However, what appear to be cases of causal inference may simply reduce to children recognizing relevant associations among events, and responding based on those associations. To examine this claim, in Experiments 1 and 2, children were introduced to a “blicket detector”, a machine that lit up and played music when certain objects were placed upon it. Children observed patterns of contingency between objects and the machine’s activation that (...)
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  24.  22
    The Bayesian Account of the Defect in Moorean Reasoning.Byeong D. Lee - 2018 - Logique Et Analyse 241:43-55.
    Many Bayesians such as White and Silins have argued that Moorean reasoning is defective because it is a case where probabilistic support fails to transmit across the relevant entailment. In this paper, I argue against their claim. On the Bayesian argument, a skeptical hypothesis is that you are a brain in a vat that appears to have hands. To disclose the defect in Moorean reasoning, the Bayesian argument is supposed to show that its appearing to you (...)
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  25.  39
    Why do frequency formats improve Bayesian reasoning? Cognitive algorithms work on information, which needs representation.Gerd Gigerenzer - 1996 - Behavioral and Brain Sciences 19 (1):23-24.
    In contrast to traditional research on base-rate neglect, an ecologically-oriented research program would analyze the correspondence between cognitive algorithms and the nature of information in the environment. Bayesian computations turn out to be simpler when information is represented in frequency formats as opposed to the probability formats used in previous research. Frequency formats often enable even uninstructed subjects to perform Bayesian reasoning.
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  26. The role of representation in bayesian reasoning: Correcting common misconceptions.Gerd Gigerenzer & Ulrich Hoffrage - 2007 - Behavioral and Brain Sciences 30 (3):264-267.
    The terms nested sets, partitive frequencies, inside-outside view, and dual processes add little but confusion to our original analysis (Gigerenzer & Hoffrage 1995; 1999). The idea of nested set was introduced because of an oversight; it simply rephrases two of our equations. Representation in terms of chances, in contrast, is a novel contribution yet consistent with our computational analysis System 1.dual process theory” is: Unless the two processes are defined, this distinction can account post hoc for almost everything. In contrast, (...)
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  27.  16
    Individuals vs. BARD: Experimental Evaluation of an Online System for Structured, Collaborative Bayesian Reasoning.Kevin B. Korb, Erik P. Nyberg, Abraham Oshni Alvandi, Shreshth Thakur, Mehmet Ozmen, Yang Li, Ross Pearson & Ann E. Nicholson - 2020 - Frontiers in Psychology 11.
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  28.  14
    The impact of information representation on Bayesian reasoning.Ulrich Hoffrage & Gerd Gigerenzer - 1996 - In Garrison W. Cottrell (ed.), Proceedings of the Eighteenth Annual Conference of The Cognitive Science Society. Lawrence Erlbaum. pp. 126--130.
  29. Reasons for (prior) belief in Bayesian epistemology.Franz Dietrich & Christian List - 2013 - Synthese 190 (5):781-786.
    Bayesian epistemology tells us with great precision how we should move from prior to posterior beliefs in light of new evidence or information, but says little about where our prior beliefs come from. It offers few resources to describe some prior beliefs as rational or well-justified, and others as irrational or unreasonable. A different strand of epistemology takes the central epistemological question to be not how to change one’s beliefs in light of new evidence, but what reasons justify a (...)
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  30.  19
    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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  31. Bayesian Informal Logic and Fallacy.Kevin Korb - 2004 - Informal Logic 24 (1):41-70.
    Bayesian reasoning has been applied formally to statistical inference, machine learning and analysing scientific method. Here I apply it informally to more common forms of inference, namely natural language arguments. I analyse a variety of traditional fallacies, deductive, inductive and causal, and find more merit in them than is generally acknowledged. Bayesian principles provide a framework for understanding ordinary arguments which is well worth developing.
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  32.  24
    A Bayesian model of legal syllogistic reasoning.Axel Constant - 2024 - Artificial Intelligence and Law 32 (2):441-462.
    Bayesian approaches to legal reasoning propose causal models of the relation between evidence, the credibility of evidence, and ultimate hypotheses, or verdicts. They assume that legal reasoning is the process whereby one infers the posterior probability of a verdict based on observed evidence, or facts. In practice, legal reasoning does not operate quite that way. Legal reasoning is also an attempt at inferring applicable rules derived from legal precedents or statutes based on the facts at (...)
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  33.  36
    Effect of Probability Information on Bayesian Reasoning: A Study of Event-Related Potentials.Zifu Shi, Lin Yin, Jian Dong, Xiang Ma & Bo Li - 2019 - Frontiers in Psychology 10.
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  34.  14
    Confirmation bias emerges from an approximation to Bayesian reasoning.Charlie Pilgrim, Adam Sanborn, Eugene Malthouse & Thomas T. Hills - 2024 - Cognition 245 (C):105693.
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  35.  19
    Corrigendum: Effect of Probability Information on Bayesian Reasoning: A Study of Event-Related Potentials.Zifu Shi, Lin Yin, Jian Dong, Xiang Ma & Bo Li - 2019 - Frontiers in Psychology 10.
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  36.  46
    Reasons as Causes in Bayesian Epistemology.Clark Glymour & David Danks - 2007 - Journal of Philosophy 104 (9):464-474.
    In everyday matters, as well as in law, we allow that someone’s reasons can be causes of her actions, and often are. That correct reasoning accords with Bayesian principles is now so widely held in philosophy, psychology, computer science and elsewhere that the contrary is beginning to seem obtuse, or at best quaint. And that rational agents should learn about the world from energies striking sensory inputs nerves in people—seems beyond question. Even rats seem to recognize the difference (...)
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  37.  88
    Bayesian Rationality: The Probabilistic Approach to Human Reasoning.Mike Oaksford & Nick Chater - 2007 - Oxford University Press.
    Are people rational? This question was central to Greek thought and has been at the heart of psychology and philosophy for millennia. This book provides a radical and controversial reappraisal of conventional wisdom in the psychology of reasoning, proposing that the Western conception of the mind as a logical system is flawed at the very outset. It argues that cognition should be understood in terms of probability theory, the calculus of uncertain reasoning, rather than in terms of logic, (...)
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  38.  16
    Could Bayesian cognitive science undermine dual-process theories of reasoning?Mike Oaksford - 2023 - Behavioral and Brain Sciences 46:e134.
    Computational-level models proposed in recent Bayesian cognitive science predict both the “biased” and correct responses on many tasks. So, rather than possessing two reasoning systems, people can generate both possible responses within a single system. Consequently, although an account of why people make one response rather than another is required, dual processes of reasoning may not be.
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  39.  87
    Reasonable doubt and the presumption of innocence: The case of the bayesian juror.Piers Rawling - 1999 - Topoi 18 (2):117-126.
    There is a substantial literature on the Bayesian approach, and the application of Bayes'' theorem, to legal matters. However, I have found no discussion that explores fully the issue of how a Bayesian juror might be led from an initial "presumption of innocence" to the judgment (required for conviction in criminal cases) that the suspect is "guilty beyond a reasonable doubt". I shall argue here that a Bayesian juror, if she acts in accord with what the law (...)
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  40. Bayesian networks for logical reasoning.Jon Williamson - manuscript
    By identifying and pursuing analogies between causal and logical influence I show how the Bayesian network formalism can be applied to reasoning about logical deductions.
     
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  41.  81
    A Bayesian Approach to Absent Evidence Reasoning.Christopher Lee Stephens - 2011 - Informal Logic 31 (1):56-65.
    Normal 0 0 1 85 487 UBC 4 1 598 11.773 0 0 0 Under what conditions is the failure to have evidence that p evidence that p is false? Absent evidence reasoning is common in many sciences, including astronomy, archeology, biology and medicine. An often-repeated epistemological motto is that “the absence of evidence is not evidence of absence.” Analysis of absent evidence reasoning usually takes place in a deductive or frequentist hypothesis-testing framework. Instead, I develop a (...) analysis of this motto and prove that, under plausible assumptions about the nature of evidence, the absence of evidence is evidence of absence. (shrink)
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  42.  4
    Reasoning Methods of Unmanned Underwater Vehicle Situation Awareness Based on Ontology and Bayesian Network.Hongfei Yao, Chunsong Han & Fengxia Xu - 2022 - Complexity 2022:1-10.
    When unmanned underwater vehicles perform tasks, the marine environment situation information perceived by their sensors is insufficient and cannot be shared; moreover, the reasoning efficiency of the situation information is not high. To deal with these problems, this paper proposes an ontology-based situation awareness information expression method, using the Bayesian network method to reason about situation information. First, the situation awareness information is determined in uncertain events when performing tasks in the marine environment. The core and application ontologies (...)
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  43. On having no reason: dogmatism and Bayesian confirmation.Peter Kung - 2010 - Synthese 177 (1):1 - 17.
    Recently in epistemology a number of authors have mounted Bayesian objections to dogmatism. These objections depend on a Bayesian principle of evidential confirmation: Evidence E confirms hypothesis H just in case Pr(H|E) > Pr(H). I argue using Keynes' and Knight's distinction between risk and uncertainty that the Bayesian principle fails to accommodate the intuitive notion of having no reason to believe. Consider as an example an unfamiliar card game: at first, since you're unfamiliar with the game, you (...)
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  44.  85
    When several bayesians agree that there will be no reasoning to a foregone conclusion.Joseph B. Kadane, Mark J. Schervish & Teddy Seidenfeld - 1996 - Philosophy of Science 63 (3):289.
    When can a Bayesian investigator select an hypothesis H and design an experiment (or a sequence of experiments) to make certain that, given the experimental outcome(s), the posterior probability of H will be lower than its prior probability? We report an elementary result which establishes sufficient conditions under which this reasoning to a foregone conclusion cannot occur. Through an example, we discuss how this result extends to the perspective of an onlooker who agrees with the investigator about the (...)
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  45. Bayesian Beauty.Silvia Milano - 2020 - Erkenntnis 87 (2):657-676.
    The Sleeping Beauty problem has attracted considerable attention in the literature as a paradigmatic example of how self-locating uncertainty creates problems for the Bayesian principles of Conditionalization and Reflection. Furthermore, it is also thought to raise serious issues for diachronic Dutch Book arguments. I show that, contrary to what is commonly accepted, it is possible to represent the Sleeping Beauty problem within a standard Bayesian framework. Once the problem is correctly represented, the ‘thirder’ solution satisfies standard rationality principles, (...)
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  46.  55
    Hierarchical Bayesian models as formal models of causal reasoning.York Hagmayer & Ralf Mayrhofer - 2013 - Argument and Computation 4 (1):36 - 45.
    (2013). Hierarchical Bayesian models as formal models of causal reasoning. Argument & Computation: Vol. 4, Formal Models of Reasoning in Cognitive Psychology, pp. 36-45. doi: 10.1080/19462166.2012.700321.
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  47.  46
    Nearly bayesian uncertain reasoning methods.Paul Snow - 1997 - Behavioral and Brain Sciences 20 (4):779-780.
    Subjects are reported as being somewhat Bayesian, but as violating the normative ideal on occasion. To abjure probability altogether is difficult. To use Bayes' Theorem scrupulously when weighing evidence can incur costs without corresponding benefits. The subjects' evident nuanced probabilism appears both realistic and reasonable.
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  48.  16
    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 (...)
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  49.  18
    When Several Bayesians Agree That There Will Be No Reasoning to a Foregone Conclusion.Joseph B. Kadane, Mark J. Schervish & Teddy Seidenfeld - 1996 - Philosophy of Science 63 (5):S281-S289.
    When can a Bayesian investigator select an hypothesis H and design an experiment to make certain that, given the experimental outcome, the posterior probability of H will be lower than its prior probability? We report an elementary result which establishes sufficient conditions under which this reasoning to a foregone conclusion cannot occur. Through an example, we discuss how this result extends to the perspective of an onlooker who agrees with the investigator about the statistical model for the data (...)
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  50.  12
    Causal models versus reason models in Bayesian networks for legal evidence.Eivind Kolflaath & Christian Dahlman - 2022 - Synthese 200 (6).
    In this paper we compare causal models with reason models in the construction of Bayesian networks for legal evidence. In causal models, arrows in the network are drawn from causes to effects. In a reason model, the arrows are instead drawn towards the evidence, from factum probandum to factum probans. We explore the differences between causal models and reason models and observe several distinct advantages with reason models. Reason models are better aligned with the philosophy of Bayesian inference, (...)
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