Title :
Empirical generalization assessment of neural network models
Author :
Larsen, Jan ; Hansen, Lars Kai
Author_Institution :
Electron. Inst., Tech. Univ. Denmark, Lyngby, Denmark
fDate :
31 Aug-2 Sep 1995
Abstract :
This paper addresses the assessment of generalization performance of neural network models by use of empirical techniques. We suggest to use the cross-validation scheme combined with a resampling technique to obtain an estimate of the generalization performance distribution of a specific model. This enables the formulation of a bulk of new generalization performance measures. Numerical results demonstrate the viability of the approach compared to the standard technique of using algebraic estimates like the FPE. Moreover, we consider the problem of comparing the generalization performance of different competing models. Since all models are trained on the same data, a key issue is to take this dependency into account. The optimal split of the data set of size N into a cross-validation set of size Nγ and a training set of size N(1-γ) is discussed. Asymptotically (large data sees), γopt→1 such that a relatively larger amount is left for validation
Keywords :
error statistics; estimation theory; generalisation (artificial intelligence); learning (artificial intelligence); neural nets; performance evaluation; cross-validation; data set; error estimation; error probability distribution; generalization; learning; neural network models; performance assessment; training set; Computer networks; Cost function; Mean square error methods; Neural networks; Predictive models; Probability distribution; Stochastic processes; Testing; Training data; Uncertainty;
Conference_Titel :
Neural Networks for Signal Processing [1995] V. Proceedings of the 1995 IEEE Workshop
Conference_Location :
Cambridge, MA
Print_ISBN :
0-7803-2739-X
DOI :
10.1109/NNSP.1995.514876