Simplifying Mixture Models through Function Approximation

Zhang, Kai, Kwok, James T.

Neural Information Processing Systems 

Finite mixture model is a powerful tool in many statistical learning problems. In this paper, we propose a general, structure-preserving approach to reduce its model complexity, which can bring significant computational benefits in many applications. The basic idea is to group the original mixture components into compact clusters, and then minimize an upper bound on the approximation error between the original and simplified models.

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