In many applications, there are multiple time series that are hierarchically organized and can be aggregated at several different levels in groups based on products, geography or some other features. We call these "hierarchical time series". They are commonly forecast using either a "bottom-up" or a "top-down" method. In this paper we propose a new approach to hierarchical forecasting which provides optimal forecasts that are better than forecasts produced by either a top-down or a bottom-up approach. Our method is based on independently forecasting all series at all levels of the hierarchy and then using a regression model to optimally combine and reconcile these forecasts. The resulting revised forecasts add up appropriately across the hi...
This is the author accepted manuscriptData availability: The data that support the findings of this...
Time series can often be naturally disaggregated in a hierarchical structure using attributes such a...
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...
Not AvailableHierarchical time-series, which are multiple time-series that are hierarchically organi...
In this paper we explore the hierarchical nature of tourism demand time series and produce short-ter...
Given a set of past data and one or more hierarchies, hierarchical forecasting aims to predict a cer...
In this paper an approach for hierarchical time series forecasting based on State Space modelling is...
Hierarchical time series arise in various fields such as manufacturing and services when the product...
In hierarchical time series (HTS) forecasting, the hierarchical relation be- tween multiple time ser...
<p>Large collections of time series often have aggregation constraints due to product or geographica...
Forecasting is used as the basis for business planning in many application areas such as energy, sal...
This paper addresses a common problem with hierarchical time series. Time series analysis demands th...
This dissertation comprises of three original contributions to empirical forecasting research. Chapt...
Hierarchical forecasting with time series has been approached with top-down and bottom-up methods, w...
This is the author accepted manuscriptData availability: The data that support the findings of this...
Time series can often be naturally disaggregated in a hierarchical structure using attributes such a...
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...
Not AvailableHierarchical time-series, which are multiple time-series that are hierarchically organi...
In this paper we explore the hierarchical nature of tourism demand time series and produce short-ter...
Given a set of past data and one or more hierarchies, hierarchical forecasting aims to predict a cer...
In this paper an approach for hierarchical time series forecasting based on State Space modelling is...
Hierarchical time series arise in various fields such as manufacturing and services when the product...
In hierarchical time series (HTS) forecasting, the hierarchical relation be- tween multiple time ser...
<p>Large collections of time series often have aggregation constraints due to product or geographica...
Forecasting is used as the basis for business planning in many application areas such as energy, sal...
This paper addresses a common problem with hierarchical time series. Time series analysis demands th...
This dissertation comprises of three original contributions to empirical forecasting research. Chapt...
Hierarchical forecasting with time series has been approached with top-down and bottom-up methods, w...
This is the author accepted manuscriptData availability: The data that support the findings of this...
Time series can often be naturally disaggregated in a hierarchical structure using attributes such a...
In this paper, we propose a machine learning approach for forecasting hierarchical time series. When...