This paper introduces the concept of Temporal Hierarchies for time series forecasting. A temporal hierarchy can be constructed for any time series by means of non-overlapping temporal aggregation. Predictions constructed at all aggregation levels are combined with the proposed framework to result in temporally reconciled, accurate and robust forecasts. The implied combination mitigates modelling uncertainty, while the reconciled nature of the forecasts results in a unified prediction that supports aligned decisions at different planning horizons: from short-term operational up to long-term strategic planning. The proposed methodology is independent of forecasting models. It can embed high level managerial forecasts that incorporate complex ...
Multivariate time series forecasting with hierarchical structure is widely used in real-world applic...
Given a set of past data and one or more hierarchies, hierarchical forecasting aims to predict a cer...
This paper addresses a common problem with hierarchical time series. Time series analysis demands th...
This paper introduces the concept of Temporal Hierarchies for time series forecasting. A temporal hi...
This paper introduces the concept of Temporal Hierarchies for time series forecasting. A temporal hi...
We examine the problem of making reconciled forecasts of large collections of related time series th...
Temporal hierarchies are being increasingly used for forecasting purposes over the past years. They ...
Temporal hierarchies have been widely used during the past few years as they are capable to provide ...
In most business forecasting applications, the decision-making need we have directs the frequency of...
In this paper an approach for hierarchical time series forecasting based on State Space modelling is...
Forecasting is used as the basis for business planning in many application areas such as energy, sal...
In this paper, we propose a machine learning approach for forecasting hierarchical time series. When...
In many applications, there are multiple time series that are hierarchically organized and can be ag...
Forecasting is an important data analysis technique and serves as the basis for business planning in...
This dissertation comprises of three original contributions to empirical forecasting research. Chapt...
Multivariate time series forecasting with hierarchical structure is widely used in real-world applic...
Given a set of past data and one or more hierarchies, hierarchical forecasting aims to predict a cer...
This paper addresses a common problem with hierarchical time series. Time series analysis demands th...
This paper introduces the concept of Temporal Hierarchies for time series forecasting. A temporal hi...
This paper introduces the concept of Temporal Hierarchies for time series forecasting. A temporal hi...
We examine the problem of making reconciled forecasts of large collections of related time series th...
Temporal hierarchies are being increasingly used for forecasting purposes over the past years. They ...
Temporal hierarchies have been widely used during the past few years as they are capable to provide ...
In most business forecasting applications, the decision-making need we have directs the frequency of...
In this paper an approach for hierarchical time series forecasting based on State Space modelling is...
Forecasting is used as the basis for business planning in many application areas such as energy, sal...
In this paper, we propose a machine learning approach for forecasting hierarchical time series. When...
In many applications, there are multiple time series that are hierarchically organized and can be ag...
Forecasting is an important data analysis technique and serves as the basis for business planning in...
This dissertation comprises of three original contributions to empirical forecasting research. Chapt...
Multivariate time series forecasting with hierarchical structure is widely used in real-world applic...
Given a set of past data and one or more hierarchies, hierarchical forecasting aims to predict a cer...
This paper addresses a common problem with hierarchical time series. Time series analysis demands th...