A key problem in time series prediction using autoregressive models is to fix the model order, namely the number of past samples required to model the time series adequately. The estimation of the model order using cross-validation may be a long process. In this paper, we investigate alternative methods to cross-validation, based on nonlinear dynamics methods, namely Grassberger-Procaccia, Kégl, Levina-Bickel and False Nearest Neighbors algorithms. The experiments have been performed in two different ways. In the first case, the model order has been used to carry out the prediction, performed by a SVM for regression on three real data time series showing that nonlinear dynamics methods have performances very close to the cross-validation on...
We address the problem of prediction of nonlinear time series by kernel estimation of autoregression...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
Abstract. A key problem in time series prediction using autoregressive models is to fix the model or...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
Recent developments in nonlinear time series modelling are reviewed. Three main types of nonlinear m...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time ...
We address the problem of prediction of nonlinear time series by kernel estimation of autoregression...
An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time ...
We address the problem of prediction of nonlinear time series by kernel estimation of autoregression...
This paper compares several model selection methods, based on experimental estimates of their genera...
We address the problem of prediction of nonlinear time series by kernel estimation of autoregression...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
Abstract. A key problem in time series prediction using autoregressive models is to fix the model or...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
A key problem in time series prediction using autoregressive models is to fix the model order, namel...
Recent developments in nonlinear time series modelling are reviewed. Three main types of nonlinear m...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time ...
We address the problem of prediction of nonlinear time series by kernel estimation of autoregression...
An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time ...
We address the problem of prediction of nonlinear time series by kernel estimation of autoregression...
This paper compares several model selection methods, based on experimental estimates of their genera...
We address the problem of prediction of nonlinear time series by kernel estimation of autoregression...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
In this present work, we provide an overview of methods for time series modelling and prediction. We...