Efficient variational inference for generalized linear mixed models with large datasets

30 Jul 2013  ·  David J Nott, Minh-Ngoc Tran, Anthony Y. C. Kuk, Robert Kohn ·

The article develops a hybrid Variational Bayes algorithm that combines the mean-field and fixed-form Variational Bayes methods. The new estimation algorithm can be used to approximate any posterior without relying on conjugate priors. We propose a divide and recombine strategy for the analysis of large datasets, which partitions a large dataset into smaller pieces and then combines the variational distributions that have been learnt in parallel on each separate piece using the hybrid Variational Bayes algorithm. The proposed method is applied to fitting generalized linear mixed models. The computational efficiency of the parallel and hybrid Variational Bayes algorithm is demonstrated on several simulated and real datasets.

PDF Abstract
No code implementations yet. Submit your code now

Categories


Methodology

Datasets


  Add Datasets introduced or used in this paper