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  1. Probabilistic Logics and Probabilistic Networks.Rolf Haenni, Jan-Willem Romeijn, Gregory Wheeler & Jon Williamson - 2010 - Dordrecht, Netherland: Synthese Library. Edited by Gregory Wheeler, Rolf Haenni, Jan-Willem Romeijn & and Jon Williamson.
    Additionally, the text shows how to develop computationally feasible methods to mesh with this framework.
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  • A new probabilistic constraint logic programming language based on a generalised distribution semantics.Steffen Michels, Arjen Hommersom, Peter J. F. Lucas & Marina Velikova - 2015 - Artificial Intelligence 228 (C):1-44.
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  • How multiplayer online battle arenas foster scientific reasoning.Carlos Castaño Díaz - 2017 - Dissertation, Ludwig Maximilians Universität, München
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  • 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 hand. To make such an (...)
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  • On argument strength.Niki Pfeifer - 2012 - In Frank Zenker (ed.), Bayesian Argumentation – The Practical Side of Probability. Springer. pp. 185-193.
    Everyday life reasoning and argumentation is defeasible and uncertain. I present a probability logic framework to rationally reconstruct everyday life reasoning and argumentation. Coherence in the sense of de Finetti is used as the basic rationality norm. I discuss two basic classes of approaches to construct measures of argument strength. The first class imposes a probabilistic relation between the premises and the conclusion. The second class imposes a deductive relation. I argue for the second class, as the first class is (...)
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  • The complexity of Bayesian networks specified by propositional and relational languages.Fabio G. Cozman & Denis D. Mauá - 2018 - Artificial Intelligence 262 (C):96-141.
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  • PRM inference using Jaffray & Faÿ’s Local Conditioning.Christophe Gonzales & Pierre-Henri Wuillemin - 2011 - Theory and Decision 71 (1):33-62.
    Probabilistic Relational Models (PRMs) are a framework for compactly representing uncertainties (actually probabilities). They result from the combination of Bayesian Networks (BNs), Object-Oriented languages, and relational models. They are specifically designed for their efficient construction, maintenance and exploitation for very large scale problems, where BNs are known to perform poorly. Actually, in large-scale problems, it is often the case that BNs result from the combination of patterns (small BN fragments) repeated many times. PRMs exploit this feature by defining these patterns (...)
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