Title :
Random Sampler M-Estimator Algorithm With Sequential Probability Ratio Test for Robust Function Approximation Via Feed-Forward Neural Networks
Author :
El-Melegy, Moumen T.
Author_Institution :
Electr. Eng. Dept., Assiut Univ., Assiut, Egypt
Abstract :
This paper addresses the problem of fitting a functional model to data corrupted with outliers using a multilayered feed-forward neural network. Although it is of high importance in practical applications, this problem has not received careful attention from the neural network research community. One recent approach to solving this problem is to use a neural network training algorithm based on the random sample consensus (RANSAC) framework. This paper proposes a new algorithm that offers two enhancements over the original RANSAC algorithm. The first one improves the algorithm accuracy and robustness by employing an M-estimator cost function to decide on the best estimated model from the randomly selected samples. The other one improves the time performance of the algorithm by utilizing a statistical pretest based on Wald´s sequential probability ratio test. The proposed algorithm is successfully evaluated on synthetic and real data, contaminated with varying degrees of outliers, and compared with existing neural network training algorithms.
Keywords :
estimation theory; function approximation; mathematics computing; multilayer perceptrons; random processes; sampling methods; statistical testing; M-estimator cost function; RANSAC framework; Wald sequential probability ratio test; functional model; multilayered feed-forward neural network; neural network training algorithm; random sample consensus framework; random sampler M-estimator algorithm; robust function approximation; statistical pretest; Function approximation; Multilayered feed-forward neural networks (MFNNs); robust statistics; training algorithm;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2251001