Publication: Mathematical optimization for time series decomposition
Institution Authors
Journal Title
Journal ISSN
Volume Title
Type
article
Access
restrictedAccess
Publication Status
Published
Abstract
Decomposing time series into trend and seasonality components reveals insights used in forecasting and anomaly detection. This study proposes a mathematical optimization approach that addresses several data-related issues in time series decomposition. Our approach does not only handle longer and multiple seasons but also identifies outliers and trend shifts. Numerical experiments on real-world and synthetic problem sets present the effectiveness of the proposed approach.
Date
2021-09
Publisher
Springer