Improved Gaussian Mixture Density Estimates Using Bayesian Penalty Terms and Network Averaging

Ormoneit, Dirk, Tresp, Volker

Neural Information Processing Systems 

We compare two regularization methods which can be used to improve thegeneralization capabilities of Gaussian mixture density estimates. The first method uses a Bayesian prior on the parameter space.We derive EM (Expectation Maximization) update rules which maximize the a posterior parameter probability. In the second approachwe apply ensemble averaging to density estimation. This includes Breiman's "bagging", which recently has been found to produce impressive results for classification networks.

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