Title :
Variational bayes learning for models with linear equality constraints
Author :
Wang Jiaqiang ; Qu Hanbing ; Yu Ming ; Li Bin ; Jin Wei
Author_Institution :
Beijing Inst. of New Technol. Applic., Beijing, China
Abstract :
It is normal that the model and parameters with constraint in machine learning field. Relative to constraints methods based on maximum likelihood criterion, We present a method to approximate the posterior probability of parameters, which are with linear constraints in variational Bayesian framework. We first eliminate the equality constraints with parameters transformation method, and then use variational learning process to approximate the posterior probability of parameters. Finally, we verify that the proposed method can effectively approximate the posterior probability of parameters through a simple linear regression example.
Keywords :
Bayes methods; learning (artificial intelligence); maximum likelihood estimation; probability; variational techniques; linear equality constraint method; linear regression; machine learning field; maximum likelihood criterion; parameter posterior probability; parameter transformation method; variational Bayes learning process; variational Bayesian framework; Approximation; Equality Constraints; Maximum Likelihood; Variational Bayes Learning;
Conference_Titel :
Control Conference (CCC), 2013 32nd Chinese
Conference_Location :
Xi´an