Sequentially Fitting ``Inclusive'' Trees for Inference in Noisy-OR Networks

Frey, Brendan J., Patrascu, Relu, Jaakkola, Tommi, Moran, Jodi

Neural Information Processing Systems 

Exact inference in large, richly connected noisy-OR networks is intractable, and most approximate inference algorithms tend to concentrate on a small number of most probable configurations of the hidden variables under the posterior. We presented an "inclusive" variational method for bipartite noisy-OR networks that favors including all probable configurations, at the cost of including some improbable configurations. The method fits a tree to the posterior distribution sequentially, i.e., one observation at a time. Results on an ensemble of QMR-DT type networks show that the method performs better than local probability propagation and a variational upper bound for ranking most probable diseases.

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