Preprint available - reinforcement learning for continuous functions
D.Gorse@cs.ucl.ac.uk
D.Gorse at cs.ucl.ac.uk
Fri Jan 14 11:08:47 EST 1994
FTP-host: archive.cis.ohio-state.edu
FTP-file: pub/neuroprose/gorse.reinforce.ps.Z
The file gorse.reinforce.ps.Z is now available for copying from the
Neuroprose archive. This is a 6 page paper, submitted to WCNN '94
San Diego. A longer and more detailed paper describing this work is in
preparation and will be available soon.
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A PULSE-BASED REINFORCEMENT ALGORITHM
FOR LEARNING CONTINUOUS FUNCTIONS
D Gorse
Department of Computer Science
University College, Gower Street, London WC1E 6BT, UK
J G Taylor
Department of Mathematics
T G Clarkson
Department of Electrical and Electronic Engineering
King's College, Strand, London WC2R 2LS, UK
ABSTRACT:
An algorithm is presented which allows continuous functions to be learned
by a neural network using spike-based reinforcement learning. Both the
mean and the variance of the weights are changed during training; the
latter is accomplished by manipulating the lengths of the spike trains
used to represent real-valued quantities. The method is here applied to
the probabilistic RAM (pRAM) model, but it may be adapted for use with any
pulse-based stochastic model in which individual weights behave as
random variables.
Denise Gorse (D.Gorse at cs.ucl.ac.uk)
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