Title :
Continuous restricted Boltzmann machine with an implementable training algorithm
Author :
Chen, H. ; Murray, A.F.
Author_Institution :
Sch. of Eng. & Electron., Univ. of Edinburgh, UK
fDate :
6/20/2003 12:00:00 AM
Abstract :
The authors introduce a continuous stochastic generative model that can model continuous data, with a simple and reliable training algorithm. The architecture is a continuous restricted Boltzmann machine, with one step of Gibbs sampling, to minimise contrastive divergence, replacing a time-consuming relaxation search. With a small approximation, the training algorithm requires only addition and multiplication and is thus computationally inexpensive in both software and hardware. The capabilities of the model are demonstrated and explored with both artificial and real data.
Keywords :
Boltzmann machines; approximation theory; signal sampling; stochastic processes; Gibbs sampling; VLSI implementation; addition; approximation; artificial data; computationally inexpensive algorithm; continuous data processing; continuous restricted Boltzmann machine; continuous stochastic generative model; contrastive divergence; embedded intelligent systems; implementable training algorithm; minimising contrastive divergence; multiplication; real data;
Journal_Title :
Vision, Image and Signal Processing, IEE Proceedings -
DOI :
10.1049/ip-vis:20030362