INVESTIGADORES
GRANITTO Pablo Miguel
artículos
Título:
Prediction of the CATS benchmark exploiting time-reversal symmetry
Autor/es:
P. F. VERDES; P. M. GRANITTO; M. I. SZELIGA; A. REBOLA; H. A. CECCATTO
Revista:
NEUROCOMPUTING
Referencias:
Año: 2007 vol. 70 p. 2363 - 2370
ISSN:
0925-2312
Resumen:
We present a general strategy for filling the missing data of the CATS benchmark time series prediction competition. Our approach builds upon a time-symmetric embedding of this time series and the use of a one-shot forecasting for each missing value inside the gaps from distant-enough delayed and forwarded predictors. In the extrapolation region we perform standard, non-iterated forward predictions. For modeling purposes we consider bagging of multi-layer perceptrons (MLPs). We discuss two different implementations of this strategy: The first one is based on a simultaneous modeling of both large- and short-scale dynamics information, using (suitably delayed and forwarded) original CATS values and their first differences as inputs to MLPs. The second one follows a two-stage strategy, in which behaviors at different scales are modeled separately. First, the overall behavior at large scales is fitted with a smooth curve obtained by repeated application of a Savitzky-Golay filter. Then, the remaining short-scale variability is approximated using bagged MLPs. Expected error levels for these two implementations are provided according to performance on test data.