Title :
Linear classifiers by window training
Author :
Bobrowski, Leon ; Sklansky, Jack
Author_Institution :
Inst. of Biocybernetics & Biomedical Eng., Acad. of Sci., Warsaw, Poland
fDate :
1/1/1995 12:00:00 AM
Abstract :
Window training, based on an extended form of stochastic approximation, offers a means of producing linear classifiers that minimize the probability of misclassification of statistically generated data. Associated with window training is a window criterion function. We show that minimizing the window criterion function yields a linear classifier that minimizes the probability of misclassification (i.e., the “error rate”). However window training may produce a local minimum that exceeds the global minimum error rate. We show that this defect does not occur in the error-correcting perceptron. The criterion minimized by that training procedure is “convex”; i.e., the perceptron criterion has only one local minimum. Consequently we recommend that window training be preceded by perceptron training, the perceptron training producing a decision surface which the window training process will move to a position that is likely to be globally optimum
Keywords :
learning (artificial intelligence); pattern classification; perceptrons; probability; error rate; error-correcting perceptron; linear classifiers; local minimum; misclassification probability; stochastic approximation; window criterion function; window training; Approximation algorithms; Costs; Cybernetics; Error analysis; Error probability; Helium; Lifting equipment; Multidimensional systems; Process design; Stochastic processes;
Journal_Title :
Systems, Man and Cybernetics, IEEE Transactions on