Multistep-ahead forecasts can either be produced recursively by iterating a one-step-ahead time series model or directly by estimating a separate model for each forecast horizon. In addition, there are other strategies; some of them combine aspects of both aforementioned concepts. In this paper, we present a comprehensive investigation into the bias and variance behavior of multistep-ahead forecasting strategies. We provide a detailed review of the different multistep-ahead strategies. Subsequently, we perform a theoretical study that derives the bias and variance for a number of forecasting strategies. Finally, we conduct a Monte Carlo experimental study that compares and evaluates the bias and variance performance of the different strateg...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
This NHH master thesis researches methodologies for forecasting a financial time series, the Baltic...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...
This paper conducts a broad-based comparison of iterated and di-rect multi-step forecasting approach...
Cite as: Davydenko, A., & Goodwin, P. (2021). Assessing point forecast bias across multiple time ser...
Abstract—The Recursive strategy is the oldest and most intuitive strategy to forecast a time series ...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
The Recursive strategy is the oldest and most intuitive strategy to forecast a time series multiple ...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
Multi-step forecasts can be produced recursively by iterating a one-step model, or directly using a ...
We delineate conditions which favour multi-step, or dynamic, estimation for multi-step forecasting. ...
We delineate conditions which favour multi-step, or dynamic estimation for multi-step forecasting. A...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
This NHH master thesis researches methodologies for forecasting a financial time series, the Baltic...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...
This paper conducts a broad-based comparison of iterated and di-rect multi-step forecasting approach...
Cite as: Davydenko, A., & Goodwin, P. (2021). Assessing point forecast bias across multiple time ser...
Abstract—The Recursive strategy is the oldest and most intuitive strategy to forecast a time series ...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
The Recursive strategy is the oldest and most intuitive strategy to forecast a time series multiple ...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
Multi-step forecasts can be produced recursively by iterating a one-step model, or directly using a ...
We delineate conditions which favour multi-step, or dynamic, estimation for multi-step forecasting. ...
We delineate conditions which favour multi-step, or dynamic estimation for multi-step forecasting. A...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
This NHH master thesis researches methodologies for forecasting a financial time series, the Baltic...