Practical methods of tracking of nonstationary time series applied to real-world data


Autoria(s): Nabney, Ian T.; McLachlan, Alan; Lowe, David
Contribuinte(s)

Rogers, S.K.

Ruck, D.W.

Data(s)

09/04/1996

Resumo

In this paper, we discuss some practical implications for implementing adaptable network algorithms applied to non-stationary time series problems. Two real world data sets, containing electricity load demands and foreign exchange market prices, are used to test several different methods, ranging from linear models with fixed parameters, to non-linear models which adapt both parameters and model order on-line. Training with the extended Kalman filter, we demonstrate that the dynamic model-order increment procedure of the resource allocating RBF network (RAN) is highly sensitive to the parameters of the novelty criterion. We investigate the use of system noise for increasing the plasticity of the Kalman filter training algorithm, and discuss the consequences for on-line model order selection. The results of our experiments show that there are advantages to be gained in tracking real world non-stationary data through the use of more complex adaptive models.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/18344/1/Practical_methods_of_tracking_of_non_stationary_time_series.pdf

Nabney, Ian T.; McLachlan, Alan and Lowe, David (1996). Practical methods of tracking of nonstationary time series applied to real-world data. IN: Applications and science of artificial neural networks II. Rogers, S.K. and Ruck, D.W. (eds) SPIE proceedings, 2760 . SPIE.

Publicador

SPIE

Relação

http://eprints.aston.ac.uk/18344/

Tipo

Book Section

NonPeerReviewed