Paper
26 April 2006 Evolutionary selection of neural networks satisfying leave-one-out criteria
Giovanni Nardinocchi, Stanislaw Jankowski, Marco Balsi
Author Affiliations +
Proceedings Volume 6159, Photonics Applications in Astronomy, Communications, Industry, and High-Energy Physics Experiments IV; 61592Z (2006) https://doi.org/10.1117/12.674862
Event: Photonics Applications in Astronomy, Communications, Industry, and High-Energy Physics Experiments IV, 2005, Wilga, Poland
Abstract
Non parametric inference error, the error arising from estimating the regression function based on a labeled set of training examples could be divided into two main contributions: the bias and the variance. Neural network is one of the existing models in non parametric inference whose bias/variance trade off is hidden below the network architecture. In recent years new and powerful tools for neural networks selection were invented to impact the bias variance dilemma and the results in the implemented solution were satisfying [11,12]. We exploited the new measures introduced in these works for implementing a genetic algorithm to train neural networks. This method enables a reliable generalization error estimation for neural model. Estimating the error performance permits to drive correctly the genetic evolution that will lead to a fitting model with the desired characteristics. After a brief description of the estimation technique we used the genetic algorithm implementation for artificial data as a test. Finally the results of the fully automatic algorithm for NN training and model selection applied to investigation of defect structure of semi-insulating materials based on photo-induced transient spectroscopy experiments.
© (2006) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Giovanni Nardinocchi, Stanislaw Jankowski, and Marco Balsi "Evolutionary selection of neural networks satisfying leave-one-out criteria", Proc. SPIE 6159, Photonics Applications in Astronomy, Communications, Industry, and High-Energy Physics Experiments IV, 61592Z (26 April 2006); https://doi.org/10.1117/12.674862
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KEYWORDS
Neural networks

Genetic algorithms

Error analysis

Performance modeling

Genetics

Neurons

Data processing

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