Integrating Probabilistic Rules into Neural Networks: A Stochastic EM Learning Algorithm
Abstract
The EM-algorithm is a general procedure to get maximum likelihood estimates if part of the observations on the variables of a network are missing. In this paper a stochastic version of the algorithm is adapted to probabilistic neural networks describing the associative dependency of variables. These networks have a probability distribution, which is a special case of the distribution generated by probabilistic inference networks. Hence both types of networks can be combined allowing to integrate probabilistic rules as well as unspecified associations in a sound way. The resulting network may have a number of interesting features including cycles of probabilistic rules, hidden 'unobservable' variables, and uncertain and contradictory evidence.
Cite
@article{arxiv.1303.5737,
title = {Integrating Probabilistic Rules into Neural Networks: A Stochastic EM Learning Algorithm},
author = {Gerhard Paass},
journal= {arXiv preprint arXiv:1303.5737},
year = {2013}
}
Comments
Appears in Proceedings of the Seventh Conference on Uncertainty in Artificial Intelligence (UAI1991)