English

Probabilistic graphs using coupled random variables

Machine Learning 2015-06-19 v1 Information Theory Neural and Evolutionary Computing math.IT

Abstract

Neural network design has utilized flexible nonlinear processes which can mimic biological systems, but has suffered from a lack of traceability in the resulting network. Graphical probabilistic models ground network design in probabilistic reasoning, but the restrictions reduce the expressive capability of each node making network designs complex. The ability to model coupled random variables using the calculus of nonextensive statistical mechanics provides a neural node design incorporating nonlinear coupling between input states while maintaining the rigor of probabilistic reasoning. A generalization of Bayes rule using the coupled product enables a single node to model correlation between hundreds of random variables. A coupled Markov random field is designed for the inferencing and classification of UCI's MLR 'Multiple Features Data Set' such that thousands of linear correlation parameters can be replaced with a single coupling parameter with just a (3%, 4%) percent reduction in (classification, inference) performance.

Keywords

Cite

@article{arxiv.1404.6955,
  title  = {Probabilistic graphs using coupled random variables},
  author = {Kenric P. Nelson and Madalina Barbu and Brian J. Scannell},
  journal= {arXiv preprint arXiv:1404.6955},
  year   = {2015}
}

Comments

Submitted for presentation at the Machine Intelligence and Bio-inspired Computation: Theory and Applications Conference, SPIE Sensing Technology and Applications, Baltimore, MD, May 8, 2014

R2 v1 2026-06-22T04:00:20.035Z