Building causal interaction models by recursive unfolding
Publication date
2020
Editors
Jaeger, Manfred
Nielsen, Thomas Dyhre
Advisors
Supervisors
DOI
Document Type
Part of book
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taverne
Abstract
Causal interaction models, such as the well-known noisy-or and leaky noisy-or models, have become quite popular as a means to parameterize conditional probability tables for Bayesian networks. In this paper we focus on the engineering of subnetworks to represent such models and present a novel technique called recursive unfolding for this purpose. This technique allows inserting, removing and merging cause variables in an interaction model at will, without affecting the underlying represented information. We detail the technique, with the recursion invariants involved, and illustrate its practical use for Bayesian-network engineering by means of a small example.
Keywords
Bayesian-network engineering, Causal interaction models, Compositionality, Taverne
Citation
van der Gaag, L C, Renooij, S & Facchini, A 2020, Building causal interaction models by recursive unfolding. in M Jaeger & T D Nielsen (eds), International Conference on Probabilistic Graphical Models, 23-25 September 2020, Hotel Comwell Rebild Bakker, Skørping, Denmark. Proceedings of Machine Learning Research, vol. 138, MLResearchPress, pp. 509-520, Tenth International Conference on Probabilistic Graphical Models, Aalborg, Denmark, 23/09/20. < http://proceedings.mlr.press/v138/van-der-gaag20a.html >, conference