Title :
The effect of stochastic interconnects in artificial neural network classification
Author :
Marks, Robert J., II ; Atlas, Les E. ; Park, Dong C. ; Oh Seho
Author_Institution :
Interactive Syst. Design Lab., Washington Univ., Seattle, WA, USA
Abstract :
Assuming that each neural state is in some sense uncorrelated with the others, each neuron represents a computational degree of freedom available to the network. The number of degrees of freedom can be artificially increased through the use of neurons in a hidden layer, the states of which can be almost any nonlinear combination of the stimulus neural states. Such nonlinearities are generated with stochastically chosen interconnects between the input and hidden neural layers with a sigmoidal nonlinearity at each hidden neuron. The hidden-to-output interconnects are chosen to be a (trainable) projection matrix whose values are a function of the stochastically chosen interconnects and the training data. Preliminary simulations of such networks show an approach to fixed generalization boundaries as the number of hidden neurons becomes larger.<>
Keywords :
neural nets; stochastic processes; artificial neural network classification; computational degree of freedom; hidden-to-output interconnects; sigmoidal nonlinearity; stochastic interconnects; trainable projection matrix; uncorrelated states; Neural networks; Stochastic processes;
Conference_Titel :
Neural Networks, 1988., IEEE International Conference on
Conference_Location :
San Diego, CA, USA
DOI :
10.1109/ICNN.1988.23957