1. ON THE LEARNING POTENTIAL OF THE APPROXIMATED QUANTRON.
- Author
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LABIB, RICHARD and DE MONTIGNY, SIMON
- Subjects
- *
MACHINE learning , *PERCEPTRONS , *ARTIFICIAL intelligence , *COMPARATIVE studies , *PATTERN recognition systems , *ALGORITHMS - Abstract
The quantron is a hybrid neuron model related to perceptrons and spiking neurons. The activation of the quantron is determined by the maximum of a sum of input signals, which is difficult to use in classical learning algorithms. Thus, training the quantron to solve classification problems requires heuristic methods such as direct search. In this paper, we present an approximation of the quantron trainable by gradient search. We show this approximation improves the classification performance of direct search solutions. We also compare the quantron and the perceptron's performance in solving the IRIS classification problem. [ABSTRACT FROM AUTHOR]
- Published
- 2012
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