Title of article :
Avoiding overfitting in multilayer perceptrons with feeling-of-knowing using self-organizing maps
Author/Authors :
Kazushi Murakoshi، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Overfitting in multilayer perceptron (MLP) training is a serious problem. The purpose of this study is to avoid overfitting in on-line learning. To overcome the overfitting problem, we have investigated feeling-of-knowing (FOK) using self-organizing maps (SOMs). We propose MLPs with FOK using the SOMs method to overcome the overfitting problem. In this method, the learning process advances according to the degree of FOK calculated using SOMs. The mean square error obtained for the test set using the proposed method is significantly less than that in a conventional MLP method. Consequently, the proposed method avoids overfitting.
Keywords :
Similarity , On-line learning , Feeling-of-knowing , Self-organizing maps , Reliability , Multilayer perceptrons
Journal title :
BioSystems
Journal title :
BioSystems