Title :
Design of robust neural network classifiers
Author :
Larsen, Jan ; Nonboe, L. ; Hintz-Madsen, Mads ; Hansen, Lars Kai
Author_Institution :
Dept. of Math. Modelling, Tech. Univ., Lyngby, Denmark
Abstract :
This paper addresses a new framework for designing robust neural network classifiers. The network is optimized using the maximum a posteriori technique, i.e., the cost function is the sum of the log-likelihood and a regularization term (prior). In order to perform robust classification, we present a modified likelihood function which incorporates the potential risk of outliers in the data. This leads to the introduction of a new parameter, the outlier probability. Designing the neural classifier involves optimization of network weights as well as outlier probability and regularization parameters. We suggest to adapt the outlier probability and regularisation parameters by minimizing the error on a validation set, and a simple gradient descent scheme is derived. In addition, the framework allows for constructing a simple outlier detector. Experiments with artificial data demonstrate the potential of the suggested framework
Keywords :
feedforward neural nets; iterative methods; minimisation; pattern classification; probability; cost function; design; error; gradient descent scheme; log-likelihood; maximum a posteriori technique; minimization; modified likelihood function; network weight; optimization; outlier detector; outlier probability; potential risk; regularization term; robust neural network classifiers; validation set; Artificial neural networks; Buildings; Cost function; Design optimization; Detectors; Mathematical model; Neural networks; Pattern recognition; Robustness; World Wide Web;
Conference_Titel :
Acoustics, Speech and Signal Processing, 1998. Proceedings of the 1998 IEEE International Conference on
Conference_Location :
Seattle, WA
Print_ISBN :
0-7803-4428-6
DOI :
10.1109/ICASSP.1998.675487