Title :
An Improved Deterministic Implementation Method for Bayesian Mixture Distributions
Author_Institution :
Sch. of Sci. & Eng., Aoyama Gakuin Univ., Sagamihara, Japan
Abstract :
This paper presents the branching approach, an improved deterministic implementation method (such as variational inference and expectation propagation) for Bayesian learning of mixture distributions. The proposed approach uses a set of artificial conditions defined by latent (hidden) variables of the mixture distribution. This condition set is updated iteratively by branching of a condition selected from the previous set. The approximated Bayesian inference is obtained by combining the conditional inferences under all conditions in the set. The proposed approach is compared with several standard implementation methods by using a mixture of normal distributions as an example.
Keywords :
belief networks; inference mechanisms; learning (artificial intelligence); statistical distributions; Bayesian inference; Bayesian learning; Bayesian mixture distributions; branching approach; deterministic implementation method; latent variables; Approximation methods; Bayesian methods; GSM; Gaussian distribution; Minimization; Probabilistic logic; Training data; Bayesian learning; Expectation propagation; Mixture distribution; Variational Bayesian inference;
Conference_Titel :
Machine Learning and Applications and Workshops (ICMLA), 2011 10th International Conference on
Conference_Location :
Honolulu, HI
Print_ISBN :
978-1-4577-2134-2
DOI :
10.1109/ICMLA.2011.32