On the Effect of the Form of the Posterior Approximation in Variational Learning of ICA Models

作者:Alexander Ilin, Harri Valpola

摘要

We show that the choice of posterior approximation affects the solution found in Bayesian variational learning of linear independent component analysis models. Assuming the sources to be independent a posteriori favours a solution which has orthogonal mixing vectors. Linear mixing models with either temporally correlated sources or non-Gaussian source models are considered but the analysis extends to nonlinear mixtures as well.

论文关键词:independent component analysis, variational Bayesian learning

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论文官网地址:https://doi.org/10.1007/s11063-005-5265-0