Building Blocks for Variational Bayesian Learning of Latent Variable Models
Abstract
We introduce standardised building blocks designed to be used with variational Bayesian learning. The blocks include Gaussian variables, summation, multiplication, nonlinearity, and delay. A large variety of latent variable models can be constructed from these blocks, including nonlinear and variance models, which are lacking from most existing variational systems. The introduced blocks are designed to fit together and to yield efficient update rules. Practical implementation of various models is easy thanks to an associated software package which derives the learning formulas automatically once a specific model structure has been fixed. Variational Bayesian learning provides a cost function which is used both for updating the variables of the model and for optimising the model structure. All the computations can be carried out locally, resulting in linear computational complexity. We present experimental results on several structures, including a new hierarchical nonlinear model for variances and means. The test results demonstrate the good performance and usefulness of the introduced method.
Cite
Text
Raiko et al. "Building Blocks for Variational Bayesian Learning of Latent Variable Models." Journal of Machine Learning Research, 2007.Markdown
[Raiko et al. "Building Blocks for Variational Bayesian Learning of Latent Variable Models." Journal of Machine Learning Research, 2007.](https://mlanthology.org/jmlr/2007/raiko2007jmlr-building/)BibTeX
@article{raiko2007jmlr-building,
title = {{Building Blocks for Variational Bayesian Learning of Latent Variable Models}},
author = {Raiko, Tapani and Valpola, Harri and Harva, Markus and Karhunen, Juha},
journal = {Journal of Machine Learning Research},
year = {2007},
pages = {155-201},
volume = {8},
url = {https://mlanthology.org/jmlr/2007/raiko2007jmlr-building/}
}