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Optimized Approximation Algorithm in Neural Networks Without Overfitting (2009)

Abstract
Abstract—In this paper, an optimized approximation algorithm (OAA) is proposed to address the overfitting problem in function approximation using neural networks (NNs). The optimized approximation algorithm avoids overfitting by means of a novel and effective stopping criterion based on the estimation of the signal-to-noise-ratio figure (SNRF). Using SNRF, which checks the goodness-of-fit in the approximation, overfitting can be automatically detected from the training error only without use of a separate validation set. The algorithm has been applied to problems of optimizing the number of hidden neurons in a multilayer perceptron (MLP) and optimizing the number of learning epochs in MLP’s backpropagation training using both synthetic and benchmark data sets. The OAA algorithm can also be utilized in the optimization of other parameters of NNs. In addition, it can be applied to the problem of function approximation using any kind of basis functions, or to the problem of learning model selection when overfitting needs to be considered. Index Terms—Function approximation, neural network (NN) learning, overfitting.

Publication details
Download http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.146.4803
Source http://www.ent.ohiou.edu/~starzyk/network/Research/Papers/Overfitting%20TNN06-P1314R%20manuscript.pdf
Contributors CiteSeerX
Repository CiteSeerX - Scientific Literature Digital Library and Search Engine (United States)
Type text
Language English
Relation 10.1.1.47.8764, 10.1.1.45.9640, 10.1.1.33.2393, 10.1.1.55.2024, 10.1.1.43.8258, 10.1.1.38.6468, 10.1.1.29.3290, 10.1.1.128.7279, 10.1.1.83.7557