Disaggregating time-series with many indicators: an overview of the disaggregateTS package
Low-frequency time-series (e.g., quarterly data) are often treated as benchmarks for interpolating to higher frequencies, since they generally exhibit greater precision and accuracy in contrast to their high-frequency counterparts (e.g., monthly data) reported by governmental bodies. An array of regression-based methods have been proposed in the literature which aim to estimate a target high-frequency series using higher frequency indicators. However, in the era of big data and with the prevalence of large volumes of administrative data-sources there is a need to extend traditional methods to work in high-dimensional settings, i.e., where the number of indicators is similar or larger than the number of low-frequency samples. The package DisaggregateTS includes both classical regressions-based disaggregation methods alongside recent extensions to high-dimensional settings. This paper provides guidance on how to implement these methods via the package in R, and demonstrates their use in an application to disaggregating CO2 emissions.
| Item Type | Article |
|---|---|
| Copyright holders | © 2025 The Author(s) |
| Departments | LSE > Academic Departments > Psychological and Behavioural Science |
| DOI | 10.32614/rj-2024-035 |
| Date Deposited | 31 Jul 2025 |
| Acceptance Date | 01 Jan 2021 |
| URI | https://researchonline.lse.ac.uk/id/eprint/128975 |
Explore Further
- https://www.scopus.com/pages/publications/105015865396 (Scopus publication)
