A Unified Learning Scheme: Bayesian-Kullback Ying-Yang Machine
Abstract
A Bayesian-Kullback learning scheme, called Ying-Yang Machine, is proposed based on the two complement but equivalent Bayesian representations for joint density and their Kullback divergence. Not only the scheme unifies existing major supervised and unsu(cid:173) pervised learnings, including the classical maximum likelihood or least square learning, the maximum information preservation, the EM & em algorithm and information geometry, the recent popular Helmholtz machine, as well as other learning methods with new variants and new results; but also the scheme provides a number of new learning models.
Cite
Text
Xu. "A Unified Learning Scheme: Bayesian-Kullback Ying-Yang Machine." Neural Information Processing Systems, 1995.Markdown
[Xu. "A Unified Learning Scheme: Bayesian-Kullback Ying-Yang Machine." Neural Information Processing Systems, 1995.](https://mlanthology.org/neurips/1995/xu1995neurips-unified/)BibTeX
@inproceedings{xu1995neurips-unified,
title = {{A Unified Learning Scheme: Bayesian-Kullback Ying-Yang Machine}},
author = {Xu, Lei},
booktitle = {Neural Information Processing Systems},
year = {1995},
pages = {444-450},
url = {https://mlanthology.org/neurips/1995/xu1995neurips-unified/}
}