Recursive unsupervised learning of finite mixture models 论文

2004IEEE Transactions on Pattern Analysis and Machine Intelligence引用 266
Bayesian Methods and Mixture ModelsAlgorithms and Data CompressionMachine Learning and Algorithms

摘要

There are two open problems when finite mixture densities are used to model multivariate data: the selection of the number of components and the initialization. In this paper, we propose an online (recursive) algorithm that estimates the parameters of the mixture and that simultaneously selects the number of components. The new algorithm starts with a large number of randomly initialized components. A prior is used as a bias for maximally structured models. A stochastic approximation recursive learning algorithm is proposed to search for the maximum a posteriori (MAP) solution and to discard the irrelevant components.