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  1. Explanation and acceptability.Peter Achinstein - 1989 - Behavioral and Brain Sciences 12 (3):467-468.
  • The complexity of approximating MAPs for belief networks with bounded probabilities.Ashraf M. Abdelbar, Stephen T. Hedetniemi & Sandra M. Hedetniemi - 2000 - Artificial Intelligence 124 (2):283-288.
  • Approximating MAPs for belief networks is NP-hard and other theorems.Ashraf M. Abdelbar & Sandra M. Hedetniemi - 1998 - Artificial Intelligence 102 (1):21-38.
  • An algorithm for rinding MAPs for belief networks through cost-based abduction.Ashraf M. Abdelbar - 1998 - Artificial Intelligence 104 (1-2):331-338.
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  • Theory autonomy and future promise.Matti Sintonen - 1989 - Behavioral and Brain Sciences 12 (3):488-488.
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  • Texting ECHO on historical data.Jan M. Zytkow - 1989 - Behavioral and Brain Sciences 12 (3):489-490.
  • A probabilistic framework for cooperative multi-agent distributed interpretation and optimization of communication.Y. Xiang - 1996 - Artificial Intelligence 87 (1-2):295-342.
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  • The refinement of probabilistic rule sets: Sociopathic interactions.David C. Wilkins & Yong Ma - 1994 - Artificial Intelligence 70 (1-2):1-32.
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  • Psychology, or sociology of science?N. E. Wetherick - 1989 - Behavioral and Brain Sciences 12 (3):489-489.
  • Fundamental concepts of qualitative probabilistic networks.Michael P. Wellman - 1990 - Artificial Intelligence 44 (3):257-303.
  • A belief network approach to optimization and parameter estimation: application to resource and environmental management.Olli Vans - 1998 - Artificial Intelligence 101 (1-2):135-163.
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  • Handling Missing Entries in Monitoring a Woman’s Monthly Cycle and Controlling Fertility.Anna Łupińska-Dubicka - 2018 - Studies in Logic, Grammar and Rhetoric 56 (1):75-90.
    Even a small percentage of missing data can cause serious problems with analysis, reducing the statistical power of a study and leading to wrong conclusions being drawn. In the case of monitoring a woman’s monthly cycle, missing entries can appear even in a woman experienced in fertility awareness methods. Due to the fact that in a system of controlling a woman’s fertility, it is the most important to predict the day of ovulation and, ultimately, to determine the fertile window as (...)
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  • Philosophical and computational models of explanation.Paul Thagard - 1991 - Philosophical Studies 64 (October):87-104.
  • Extending explanatory coherence.Paul Thagard - 1989 - Behavioral and Brain Sciences 12 (3):490-502.
  • Explanatory coherence (plus commentary).Paul Thagard - 1989 - Behavioral and Brain Sciences 12 (3):435-467.
    This target article presents a new computational theory of explanatory coherence that applies to the acceptance and rejection of scientific hypotheses as well as to reasoning in everyday life, The theory consists of seven principles that establish relations of local coherence between a hypothesis and other propositions. A hypothesis coheres with propositions that it explains, or that explain it, or that participate with it in explaining other propositions, or that offer analogous explanations. Propositions are incoherent with each other if they (...)
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  • Categorical and probabilistic reasoning in medicine revisited.Peter Szolovits & Stephen G. Pauker - 1993 - Artificial Intelligence 59 (1-2):167-180.
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  • Initialization for the method of conditioning in Bayesian belief networks.H. Jacques Suermondt & Gregory F. Cooper - 1991 - Artificial Intelligence 50 (1):83-94.
  • Theory autonomy and future promise.Matti Sintonen - 1989 - Behavioral and Brain Sciences 12 (3):488-488.
  • ECHO and STAHL: On the theory of combustion.Herbert A. Simon - 1989 - Behavioral and Brain Sciences 12 (3):487-487.
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  • Implementing Dempster's rule for hierarchical evidence.Glenn Shafer & Roger Logan - 1987 - Artificial Intelligence 33 (3):271-298.
  • Measuring the plausibility of explanatory hypotheses.James A. Reggia - 1989 - Behavioral and Brain Sciences 12 (3):486-487.
  • Explanatory coherence in understanding persons, interactions, and relationships.Stephen J. Read & Lynn C. Miller - 1989 - Behavioral and Brain Sciences 12 (3):485-486.
  • The sensitivity of belief networks to imprecise probabilities: an experimental investigation.Malcolm Pradhan, Max Henrion, Gregory Provan, Brendan Del Favero & Kurt Huang - 1996 - Artificial Intelligence 85 (1-2):363-397.
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  • Probabilistic conflicts in a search algorithm for estimating posterior probabilities in Bayesian networks.David Poole - 1996 - Artificial Intelligence 88 (1-2):69-100.
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  • Deep learning and cognitive science.Pietro Perconti & Alessio Plebe - 2020 - Cognition 203:104365.
    In recent years, the family of algorithms collected under the term ``deep learning'' has revolutionized artificial intelligence, enabling machines to reach human-like performances in many complex cognitive tasks. Although deep learning models are grounded in the connectionist paradigm, their recent advances were basically developed with engineering goals in mind. Despite of their applied focus, deep learning models eventually seem fruitful for cognitive purposes. This can be thought as a kind of biological exaptation, where a physiological structure becomes applicable for a (...)
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  • Fusion and propagation with multiple observations in belief networks.Mark A. Peot & Ross D. Shachter - 1991 - Artificial Intelligence 48 (3):299-318.
  • Evidential reasoning using stochastic simulation of causal models.Judea Pearl - 1987 - Artificial Intelligence 32 (2):245-257.
  • Embracing causality in default reasoning.Judea Pearl - 1988 - Artificial Intelligence 35 (2):259-271.
  • Distributed revision of composite beliefs.Judea Pearl - 1987 - Artificial Intelligence 33 (2):173-215.
  • Belief networks revisited.Judea Pearl - 1993 - Artificial Intelligence 59 (1-2):49-56.
  • A model of belief.J. B. Paris & A. Vencovská - 1993 - Artificial Intelligence 64 (2):197-241.
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  • Probability and normativity.David Papineau - 1989 - Behavioral and Brain Sciences 12 (3):484-485.
  • Extracting the coherent core of human probability judgement: a research program for cognitive psychology.Daniel Osherson, Eldar Shafir & Edward E. Smith - 1994 - Cognition 50 (1-3):299-313.
  • Coherence and abduction.Paul O'Rorke - 1989 - Behavioral and Brain Sciences 12 (3):484-484.
  • Building large knowledge-based systems: Representation and inference in the cyc project.Robert Neches - 1993 - Artificial Intelligence 61 (1):65-79.
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  • Optimization and connectionism are two different things.Drew McDermott - 1989 - Behavioral and Brain Sciences 12 (3):483-484.
  • Acceptability, analogy, and the acceptability of analogies.Robert N. McCauley - 1989 - Behavioral and Brain Sciences 12 (3):482-483.
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  • IDSSs opportunities and problems: Steps to development of an IDSS. [REVIEW]Gilberto Marzano - 1992 - AI and Society 6 (2):115-139.
    IDSSs should contribute to the enhancement of human performance, but their effectiveness can be guaranteed only in the case of certain decision types. The issues explored in this paper show that they can help to overcome some human limitations, especially in complex data and information processes, in uncertainty management, and in coherent reasoning. Integrating human and machine expertise is clearly beneficial, nevertheless with the aim of building intelligent solutions we should not ignore the role of human factors and the problems (...)
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  • New science for old.Bruce Mangan & Stephen Palmer - 1989 - Behavioral and Brain Sciences 12 (3):480-482.
  • Explanationism, ECHO, and the connectionist paradigm.William G. Lycan - 1989 - Behavioral and Brain Sciences 12 (3):480-480.
  • Explanatory coherence in neural networks?Daniel S. Levine - 1989 - Behavioral and Brain Sciences 12 (3):479-479.
  • Assumptions, beliefs and probabilities.Kathryn Blackmond Laskey & Paul E. Lehner - 1989 - Artificial Intelligence 41 (1):65-77.
  • Bayesian updating: On the interpretation of exhaustive and mutually exclusive assumptions.F. C. Lam & W. K. Yeap - 1992 - Artificial Intelligence 53 (2-3):245-254.
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  • Using hidden nodes in Bayesian networks.Chee-Keong Kwoh & Duncan Fyfe Gillies - 1996 - Artificial Intelligence 88 (1-2):1-38.
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  • Bayesian diagnosis in expert systems.Gernot D. Kleiter - 1992 - Artificial Intelligence 54 (1-2):1-32.
  • A framework for explaining decision-theoretic advice.David A. Klein & Edward H. Shortliffe - 1994 - Artificial Intelligence 67 (2):201-243.
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  • Does ECHO explain explanation? A psychological perspective.Joshua Klayman & Robin M. Hogarth - 1989 - Behavioral and Brain Sciences 12 (3):478-479.
  • Inference to the best explanation is basic.John R. Josephson - 1989 - Behavioral and Brain Sciences 12 (3):477-478.
  • A model theory of induction.Philip N. Johnson‐Laird - 1994 - International Studies in the Philosophy of Science 8 (1):5 – 29.
    Abstract Theories of induction in psychology and artificial intelligence assume that the process leads from observation and knowledge to the formulation of linguistic conjectures. This paper proposes instead that the process yields mental models of phenomena. It uses this hypothesis to distinguish between deduction, induction, and creative forms of thought. It shows how models could underlie inductions about specific matters. In the domain of linguistic conjectures, there are many possible inductive generalizations of a conjecture. In the domain of models, however, (...)
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  • Gibbs sampling in Bayesian networks.Tomas Hrycej - 1990 - Artificial Intelligence 46 (3):351-363.