cover image: Smooth Forecast Reconciliation

20.500.12592/tb2rhw7

Smooth Forecast Reconciliation

22 Mar 2024

How to make forecasts that (1) satisfy constraints, like accounting identities, and (2) are smooth over time? Solving this common forecasting problem manually is resource-intensive, but the existing literature provides little guidance on how to achieve both objectives. This paper proposes a new method to smooth mixed-frequency multivariate time series subject to constraints by integrating the minimum-trace reconciliation and Hodrick-Prescott filter. With linear constraints, the method has a closed-form solution, convenient for a high-dimensional environment. Three examples show that the proposed method can reproduce the smoothness of professional forecasts subject to various constraints and slightly improve forecast performance.

Authors

Sakai Ando

Format
Paper
Frequency
regular
ISBN
9798400268922
ISSN
1018-5941
Pages
28
Published in
United States of America
Series
Working Paper No. 2024/066
StockNumber
WPIEA2024066