Approximating Posterior Distributions in Belief Networks Using Mixtures
Bishop, Christopher M., Lawrence, Neil D., Jaakkola, Tommi, Jordan, Michael I.
–Neural Information Processing Systems
Exact inference in densely connected Bayesian networks is computationally intractable,and so there is considerable interest in developing effective approximation schemes. One approach which has been adopted is to bound the log likelihood using a mean-field approximating distribution. While this leads to a tractable algorithm, the mean field distribution is assumed tobe factorial and hence unimodal.
Neural Information Processing Systems
Dec-31-1998