Title :
Stochastic neural computation. II. Soft competitive learning
Author :
Brown, Bradley D. ; Card, Howard C.
Author_Institution :
Dept. of Electr. & Comput. Eng., Manitoba Univ., Winnipeg, Man., Canada
fDate :
9/1/2001 12:00:00 AM
Abstract :
For pt. I see ibid., p.891-905. An investigation has been made into the use of stochastic arithmetic to implement an artificial neural network solution to a typical pattern recognition application. Optical character recognition is performed on very noisy characters in the E-13B MICR font. The artificial neural network is composed of two layers, the first layer being a set of soft competitive learning subnetworks and the second a set of fully connected linear output neurons. The observed number of clock cycles in the stochastic case represents an order of magnitude improvement over the floating-point implementation assuming clock frequency parity. Network generalization capabilities were also compared based on the network squared error as a function of the amount of noise added to the input patterns. The stochastic network maintains a squared error within 10 percent of that of the floating-point implementation for a wide range of noise levels
Keywords :
digital arithmetic; neural nets; unsupervised learning; artificial neural network; competitive learning; neural computation; pattern recognition; stochastic arithmetic; Arithmetic; Artificial neural networks; Character recognition; Clocks; Optical character recognition software; Optical computing; Optical noise; Pattern recognition; Stochastic processes; Stochastic resonance;
Journal_Title :
Computers, IEEE Transactions on