Time series forecasting plays an increasingly important role in modern business decisions. In today's data-rich environment, people often aim to choose the optimal forecasting model for their data. However, identifying the optimal model requires professional knowledge and experience, making accurate forecasting a challenging task. To mitigate the importance of model selection, we propose a simple and reliable algorithm to improve the forecasting performance. Specifically, we construct multiple time series with different sub-seasons from the original time series. These derived series highlight different sub-seasonal patterns of the original series, making it possible for the forecasting methods to capture diverse patterns and components of t...
Time series data are sometimes affected by multiple cycles of different lengths. There can be a week...
The M4 forecasting competition challenged the participants to forecast 100,000 time series with diff...
this paper. This diagnostic check is recommended for routine use when fitting seasonal ARMA models. ...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...
The present study aimed to examine the forecasting performance of various univariate approaches to f...
This dissertation is divided into two parts. The first part introduces the p-Holdout family of valid...
In most business forecasting applications, the decision-making need we have directs the frequency of...
A new approach to forecasting seasonal data is proposed where seasonal terms can be updated using th...
Traditional methodologies for time series prediction take the series to be predicted and split it in...
A major problem for many organisational forecasters is to choose the appropriate forecasting method ...
In research of time series forecasting, a lot of uncertainty is still related to the question of wh...
A new approach is proposed for forecasting a time series with multiple seasonal patterns. A state sp...
International audienceSeasonal behaviours are widely encountered in various applications. For instan...
This thesis evaluates four of the most popular methods for combining time series forecasts. One aspe...
Multiple seasonalities play a key role in time series forecasting, especially for business time seri...
Time series data are sometimes affected by multiple cycles of different lengths. There can be a week...
The M4 forecasting competition challenged the participants to forecast 100,000 time series with diff...
this paper. This diagnostic check is recommended for routine use when fitting seasonal ARMA models. ...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...
The present study aimed to examine the forecasting performance of various univariate approaches to f...
This dissertation is divided into two parts. The first part introduces the p-Holdout family of valid...
In most business forecasting applications, the decision-making need we have directs the frequency of...
A new approach to forecasting seasonal data is proposed where seasonal terms can be updated using th...
Traditional methodologies for time series prediction take the series to be predicted and split it in...
A major problem for many organisational forecasters is to choose the appropriate forecasting method ...
In research of time series forecasting, a lot of uncertainty is still related to the question of wh...
A new approach is proposed for forecasting a time series with multiple seasonal patterns. A state sp...
International audienceSeasonal behaviours are widely encountered in various applications. For instan...
This thesis evaluates four of the most popular methods for combining time series forecasts. One aspe...
Multiple seasonalities play a key role in time series forecasting, especially for business time seri...
Time series data are sometimes affected by multiple cycles of different lengths. There can be a week...
The M4 forecasting competition challenged the participants to forecast 100,000 time series with diff...
this paper. This diagnostic check is recommended for routine use when fitting seasonal ARMA models. ...