Constructing hierarchical time series through clustering: Is there an optimal way for forecasting?

主讲人:Prof. Anastasios Panagiotelis
时间:2025年6月23日下午15:00   地点:数学院南楼N219

学术海报

【报告摘要】Forecast reconciliation has attracted significant research interest in recent years, with most studies taking the hierarchy of time series as given. We extend existing work that uses time series clustering to construct hierarchies to improve forecast accuracy in three ways. First, we investigate multiple approaches to clustering, including different clustering algorithms, how time series are represented, and how the distance between time series is defined. We find that cluster-based hierarchies improve forecast accuracy relative to two-level hierarchies. Second, we devise an approach based on random permutation of hierarchies, keeping the hierarchy structure fixed while time series are randomly allocated to clusters. In doing so, we find that improvements in forecast accuracy that accrue from using clustering do not arise from grouping similar series but from the structure of the hierarchy. Third, we propose an approach based on averaging forecasts across hierarchies constructed using different clustering methods that is shown to outperform any single clustering method. All analysis is carried out on two benchmark datasets and a simulated dataset. Our findings provide new insights into the role of hierarchy construction in forecast reconciliation and offer valuable guidance on forecasting practice.

 

【报告人简介】Anastasios Panagiotelis is a Professor in the Deparment of Econometrics and Business Statistics at Monash University. He is also a Director of the International Institute of Forecasters and Associate Editor of the International Journal of Forecasting. His work lies in the intersection of business analytics, statistics and econometrics. He has published in a diverse range of top-tier journals including the Journal of the American Statistical Association, Journal of Econometrics and the European Journal of Operational Research and has been a lead CI on two Australian Research Council Discovery Projects. Anastasios received his PhD from the University of Sydney and was previously a member of Faculty at the University of Sydney and an Alexander von Humboldt Postdoctoral Researcher in the Faculty of Mathematics at the Technical University of Munich.