Friday, April 14, 2006

CMU ML talk: Bayesian Inference for Gaussian Mixed Graph Models

Speaker: Ricardo Silva, UCL
http://www.cs.cmu.edu/~rbas
Date: April 17

Abstract: We introduce priors and algorithms to perform Bayesian inference in Gaussian models defined by acyclic directed mixed graphs. Such a class of graphs, composed of directed and bi-directed edges, is a representation of conditional independencies that is closed under marginalization and arises naturally from causal models which allow for unmeasured confounding. Monte Carlo methods and a variational approximation for such models are presented. Our algorithms for Bayesian inference allow the evaluation of posterior distributions for several quantities of interest, including causal effects that are not identifiable from data alone but could otherwise be inferred where informative prior knowledge about confounding is available.

Joint work with Zoubin Ghahramani

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