Laplace Propagation
Eskin, Eleazar, Smola, Alex J., Vishwanathan, S.v.n.
–Neural Information Processing Systems
We present a novel method for approximate inference in Bayesian models andregularized risk functionals. It is based on the propagation of mean and variance derived from the Laplace approximation of conditional probabilitiesin factorizing distributions, much akin to Minka's Expectation Propagation. In the jointly normal case, it coincides with the latter and belief propagation, whereas in the general case, it provides an optimization strategy containing Support Vector chunking, the Bayes Committee Machine, and Gaussian Process chunking as special cases.
Neural Information Processing Systems
Dec-31-2004