We present a nonparametric method to forecast a seasonal univariate time series, and propose four dynamic updating methods to improve point forecast accuracy. Our methods consider a seasonal univariate time series as a functional time series. We propose first to reduce the dimensionality by applying functional principal component analysis to the historical observations, and then to use univariate time series forecasting and functional principal component regression techniques. When data in the most recent year are partially observed, we improve point forecast accuracy using dynamic updating methods. We also introduce a nonparametric approach to construct prediction intervals of updated forecasts, and compare the empirical coverage probabili...
This study introduces a new class of time series models capturing dynamic seasonality. Unlike tradit...
© 2021 Yawen ShaoFor managing the impacts of climate variability and change, climate outlooks on sub...
This paper focuses on developing a new data-driven procedure for decomposing seasonal time series ba...
We present a nonparametric method to forecast a seasonal univariate time series, and propose four dy...
Abstract: We present a nonparametric method to forecast a seasonal time series, and propose four dyn...
Two nonparametric methods are presented for forecasting functional time series (FTS). The FTS we obs...
Traditional methodologies for time series prediction take the series to be predicted and split it in...
This article proposes an alternative methodology for modeling and forecasting seasonal series. The a...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
We define one-sided dynamic principal components (ODPC) for time series as linear combinations of th...
New innovations state space modeling tools, incorporating Box-Cox transformations, Fourier series wi...
International audienceTime series forecasting has an important role in many real applications in met...
A new approach to forecasting seasonal data is proposed where seasonal terms can be updated using th...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
This paper focuses on developing a new data-driven procedure for decomposing seasonal time series ba...
This study introduces a new class of time series models capturing dynamic seasonality. Unlike tradit...
© 2021 Yawen ShaoFor managing the impacts of climate variability and change, climate outlooks on sub...
This paper focuses on developing a new data-driven procedure for decomposing seasonal time series ba...
We present a nonparametric method to forecast a seasonal univariate time series, and propose four dy...
Abstract: We present a nonparametric method to forecast a seasonal time series, and propose four dyn...
Two nonparametric methods are presented for forecasting functional time series (FTS). The FTS we obs...
Traditional methodologies for time series prediction take the series to be predicted and split it in...
This article proposes an alternative methodology for modeling and forecasting seasonal series. The a...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
We define one-sided dynamic principal components (ODPC) for time series as linear combinations of th...
New innovations state space modeling tools, incorporating Box-Cox transformations, Fourier series wi...
International audienceTime series forecasting has an important role in many real applications in met...
A new approach to forecasting seasonal data is proposed where seasonal terms can be updated using th...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
This paper focuses on developing a new data-driven procedure for decomposing seasonal time series ba...
This study introduces a new class of time series models capturing dynamic seasonality. Unlike tradit...
© 2021 Yawen ShaoFor managing the impacts of climate variability and change, climate outlooks on sub...
This paper focuses on developing a new data-driven procedure for decomposing seasonal time series ba...