Title :
Neural modeling for time series: A statistical stepwise method for weight elimination
Author :
Cottrell, Marie ; Girard, Bernard ; Girard, Yvonne ; Mangeas, Morgan ; Muller, Corinne
Author_Institution :
Centre de Recherche SAMOS, Paris 1 Univ., France
fDate :
11/1/1995 12:00:00 AM
Abstract :
Many authors use feedforward neural networks for modeling and forecasting time series. Most of these applications are mainly experimental, and it is often difficult to extract a general methodology from the published studies. In particular, the choice of architecture is a tricky problem. We try to combine the statistical techniques of linear and nonlinear time series with the connectionist approach. The asymptotical properties of the estimators lead us to propose a systematic methodology to determine which weights are nonsignificant and to eliminate them to simplify the architecture. This method (SSM or statistical stepwise method) is compared to other pruning techniques and is applied to some artificial series, to the famous Sunspots benchmark, and to daily electrical consumption data
Keywords :
feedforward neural nets; forecasting theory; modelling; statistical analysis; time series; Sunspots benchmark; asymptotical properties; daily electrical consumption data; feedforward neural networks; forecasting; linear time series; nonlinear time series; pruning techniques; statistical stepwise method; weight elimination; Clouds; Difference equations; Feedforward neural networks; Meteorology; Multilayer perceptrons; Neural networks; Nonlinear equations; Predictive models; Random variables; Temperature;
Journal_Title :
Neural Networks, IEEE Transactions on