I propose principles and methods for the construction of a time-simultaneous prediction band for a univariate time series. The methods are entirely based on a learning sample of time trajectories, and make no parametric assumption about its distribution. Hence, the methods are general and widely applicable. The expected coverage probability of a band can be estimated by a bootstrap procedure. The estimate is likely to be less than the nominal level. Expected lack of coverage can be compensated for by increasing the coverage in the learning sample. Applications to simulated and empirical data illustrate the methods. Copyright © 2007 John Wiley & Sons, Ltd.
Forecasting Multiple Time Series (MTS) consists of multiple time series with no relation between the...
Includes bibliographical references (p. 19).Time series analysis is used in numerous fields. Time se...
Abstract. Multistep-ahead prediction is the task of predicting a sequence of values in a time series...
This paper deals with simultaneous prediction for time series models. In particular, it presents a ...
This paper deals with simultaneous prediction for time series models. In particular, it presents a s...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
This thesis deals with the development of time series analysis methods. Our contributions focus on t...
Neural Network approaches to time series prediction are briefly discussed, and the need to find the ...
We prove that under suitable conditions, a multi-band wide sense stationary stochastic process can b...
In this paper, we investigate the application of adaptive ensemble models of Extreme Learning Machin...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
This article concerns the construction of prediction intervals for time series models. The estimativ...
The theory and methodology of obtaining bootstrap prediction intervals for univariate time series us...
To what extent can we forecast a time series without fitting to historical data? Can universal patte...
This article proposes knowledge-based short-time prediction methods for multivariate streaming time ...
Forecasting Multiple Time Series (MTS) consists of multiple time series with no relation between the...
Includes bibliographical references (p. 19).Time series analysis is used in numerous fields. Time se...
Abstract. Multistep-ahead prediction is the task of predicting a sequence of values in a time series...
This paper deals with simultaneous prediction for time series models. In particular, it presents a ...
This paper deals with simultaneous prediction for time series models. In particular, it presents a s...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
This thesis deals with the development of time series analysis methods. Our contributions focus on t...
Neural Network approaches to time series prediction are briefly discussed, and the need to find the ...
We prove that under suitable conditions, a multi-band wide sense stationary stochastic process can b...
In this paper, we investigate the application of adaptive ensemble models of Extreme Learning Machin...
In this present work, we provide an overview of methods for time series modelling and prediction. We...
This article concerns the construction of prediction intervals for time series models. The estimativ...
The theory and methodology of obtaining bootstrap prediction intervals for univariate time series us...
To what extent can we forecast a time series without fitting to historical data? Can universal patte...
This article proposes knowledge-based short-time prediction methods for multivariate streaming time ...
Forecasting Multiple Time Series (MTS) consists of multiple time series with no relation between the...
Includes bibliographical references (p. 19).Time series analysis is used in numerous fields. Time se...
Abstract. Multistep-ahead prediction is the task of predicting a sequence of values in a time series...