A1 Refereed original research article in a scientific journal
Forecasting With Dynamic Factor Models Estimated by Partial Least Squares
Authors: Rauhala, Samuel
Publisher: Wiley
Publication year: 2026
Journal: Journal of Forecasting
Article number: for.70158
ISSN: 1099-131X
eISSN: 0277-6693
DOI: https://doi.org/10.1002/for.70158
Publication's open availability at the time of reporting: Open Access
Publication channel's open availability : Partially Open Access publication channel
Web address : https://doi.org/10.1002/for.70158
Self-archived copy’s web address: https://research.utu.fi/converis/portal/detail/Publication/523225592
Self-archived copy's licence: CC BY
Self-archived copy's version: Publisher`s PDF
Dynamic factor models (DFMs) have found great success in nowcasting and short-term macroeconomic forecasting when incorporating large sets of predictive information. The factor loadings are typically estimated cross-sectionally with principal component analysis (PCA) or maximum likelihood (ML), which ignore whether the factors have predictive power. We suggest two novel alternative approaches using partial least squares to estimate large vector autoregressions (VARs) and DFMs, which take the dynamic dependencies better into account. Our Monte Carlo simulations and forecasting results for the Finnish GDP growth show that these methods generally perform on par with and under certain conditions better than the existing approaches.
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The author would like to thank Petteri Juvonen, Juho Koistinen, Markku Lanne, Henri Nyberg, Joni Virta, and seminar participants at the Bank of Finland (2024), Nordic Econometric Meeting (Bergen 2024), CFE 2024 (London), and Helsinki Graduate School of Economics (2024). The financial support from the OP Group Research Foundation (grant 20230116), the Foundation for Economic Education (Liikesivistysrahasto, grant 220246), the Turku University Foundation (Turun Yliopistosaatio, grant 081875), and The Finnish Doctoral Program Network in Artificial Intelligence, AI-DOC (decision number VN/3137/2024-OKM-6) is gratefully acknowledged. Special thanks are due to the Bank of Finland for the data used in Section 5 and research cooperation (research visit in the autumn 2024). Open access publishing facilitated by Turun yliopisto, as part of the Wiley - FinELib agreement.