Abstract
The assessment of a probability distribution associated with a Bayesian network is a challenging task, even if its topology is sparse. Special probability distributions based on the notion of causal independence have therefore been proposed, as these allow defining a probability distribution in terms of Boolean combinations of local distributions. However, for very large networks even this approach becomes infeasible: in Bayesian networks which need to model a large number of interactions among causal mechanisms, such as in fields like genetics or immunology, it is necessary to further reduce the number of parameters that need to be assessed. In this paper, we propose using equivalence classes of binomial distributions as a means to define very large Bayesian networks. We analyse the behaviours obtained by using different symmetric Boolean functions with these probability distributions as a means to model joint interactions. Some surprisingly complicated behaviours are obtained in this fashion, and their intuitive basis is examined.
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References
F. J. Díez, Parameter adjustment in Bayes networks. The generalized noisy or-gate, Proc. UAI-93, pp. 99–105, 1993.
H.B. Enderton, A Mathematical Introduction to Logic, Academic Press, San Diego, 1972.
N. Friedman, Inferring cellular networks using probabilistic graphical models, Science, 3003, pp. 799–805, 2004.
D. Heckerman and J.S. Breese, A new look at causal independence, Proc. UAI-94, pp. 286–292, 1994.
F.V. Jensen, Bayesian Networks and Decision Graphs, Springer-Verlag, Berlin, 2001.
R. Jurgelenaite and P.J.F. Lucas, Parameter Estimation in Large Causal Independence Models, Technical Report, NIII, Radboud University Nijmegen, NIII-R0414, 2004.
P.J.F. Lucas, Bayesian network modelling by qualitative patterns, Proc. ECAI-2002, pp. 690–694, 2002.
M.A. Shwe, B. Middleton, D.E. Heckerman, M. Henrion, E.J. Horvitz, H.P. Lehmann and G.F. Cooper. Probabilistic diagnosis using a reformulation of the INTERNIST-1/QMR knowledge base, I — The probabilistic model and inference algorithms, Methods Inf Med, 30, pp. 241–255, 1991.
I. Wegener, The Complexity of Boolean Functions, John Wiley, New York, 1987.
N.L. Zhang and D. Poole, Exploiting causal independence in Bayesian networks inference, JAIR, 5, pp. 301–328, 1996.
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© 2005 Springer-Verlag London Limited
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Jurgelenaite, R., Lucas, P. (2005). Exploiting Causal Independence in Large Bayesian Networks. In: Bramer, M., Coenen, F., Allen, T. (eds) Research and Development in Intelligent Systems XXI. SGAI 2004. Springer, London. https://doi.org/10.1007/1-84628-102-4_12
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DOI: https://doi.org/10.1007/1-84628-102-4_12
Publisher Name: Springer, London
Print ISBN: 978-1-85233-907-4
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