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IFSA
2007
Springer

Strict Generalization in Multilayered Perceptron Networks

13 years 10 months ago
Strict Generalization in Multilayered Perceptron Networks
Typically the response of a multilayered perceptron (MLP) network on points which are far away from the boundary of its training data is not very reliable. When test data points are far away from the boundary of its training data, the network should not make any decision on these points. We propose a training scheme for MLPs which tries to achieve this. Our methodology trains a composite network consisting of two subnetworks : a mapping network and a vigilance network. The mapping network learns the usual input-output relation present in the data and the vigilance network learns a decision boundary and decides on which points the mapping network should respond. Though here we propose the methodology for multilayered perceptrons, the philosophy is quite general and can be used with other learning machines also.
Debrup Chakraborty, Nikhil R. Pal
Added 08 Jun 2010
Updated 08 Jun 2010
Type Conference
Year 2007
Where IFSA
Authors Debrup Chakraborty, Nikhil R. Pal
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