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  1. Interdisciplinary thinking about mechanisms and causes. [REVIEW]Armin W. Schulz - 2015 - Studies in History and Philosophy of Science Part C: Studies in History and Philosophy of Biological and Biomedical Sciences 50:94-97.
  • Using hidden nodes in Bayesian networks.Chee-Keong Kwoh & Duncan Fyfe Gillies - 1996 - Artificial Intelligence 88 (1-2):1-38.
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  • Should causal models always be Markovian? The case of multi-causal forks in medicine.Donald Gillies & Aidan Sudbury - 2013 - European Journal for Philosophy of Science 3 (3):275-308.
    The development of causal modelling since the 1950s has been accompanied by a number of controversies, the most striking of which concerns the Markov condition. Reichenbach's conjunctive forks did satisfy the Markov condition, while Salmon's interactive forks did not. Subsequently some experts in the field have argued that adequate causal models should always satisfy the Markov condition, while others have claimed that non-Markovian causal models are needed in some cases. This paper argues for the second position by considering the multi-causal (...)
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  • Handling uncertainty in artificial intelligence, and the Bayesian controversy.Donald Gillies - 2004 - In Friedrich Stadler (ed.), Vienna Circle Institute Yearbook. Springer. pp. 199.
    This paper is divided into two parts. In the first part , I will describe briefly how advances in artificial intelligence in the 1970s led to the crucial problem of handling uncertainty, and how attempts to solve this problem led in turn to the emergence of the new theory of Bayesian networks. I will try to focus in this historical account on the key ideas and will not give a full account of the technical details. Then, in the second part (...)
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  • Debates on Bayesianism and the theory of Bayesian networks.Donald Gillies - 1998 - Theoria 64 (1):1-22.
  • Causality, propensity, and bayesian networks.Donald Gillies - 2002 - Synthese 132 (1-2):63 - 88.
    This paper investigates the relations between causality and propensity. Aparticular version of the propensity theory of probability is introduced, and it is argued that propensities in this sense are not causes. Some conclusions regarding propensities can, however, be inferred from causal statements, but these hold only under restrictive conditions which prevent cause being defined in terms of propensity. The notion of a Bayesian propensity network is introduced, and the relations between such networks and causal networks is investigated. It is argued (...)
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