We study the problem of factor modelling vector- and tensor-valued time series in the presence of heavy tails in the data, which produce extreme observations with non-negligible probability. We propose to combine a two-step procedure for tensor decomposition with data truncation, which is easy to implement and does not require an iterative search for a numerical solution. Departing away from the light-tail assumptions often adopted in the time series factor modelling literature, we derive the consistency and asymptotic normality of the proposed estimators while assuming the existence of the (2 + 2)-th moment only for some ∈ (0, 1). Our rates explicitly depend on characterising the effect of heavy tails, and on the chosen level of truncation. We also propose a consistent criterion for determining the number of factors. Simulation studies and applications to two macroeconomic datasets demonstrate the good performance of the proposed estimators.

Barigozzi, M., Cho, H., Maeng, H. (2026). Tail-robust factor modelling of vector and tensor time series in high dimensions. BIOMETRIKA, 113(2), 1-20 [10.1093/biomet/asaf093].

Tail-robust factor modelling of vector and tensor time series in high dimensions

Barigozzi, Matteo;
2026

Abstract

We study the problem of factor modelling vector- and tensor-valued time series in the presence of heavy tails in the data, which produce extreme observations with non-negligible probability. We propose to combine a two-step procedure for tensor decomposition with data truncation, which is easy to implement and does not require an iterative search for a numerical solution. Departing away from the light-tail assumptions often adopted in the time series factor modelling literature, we derive the consistency and asymptotic normality of the proposed estimators while assuming the existence of the (2 + 2)-th moment only for some ∈ (0, 1). Our rates explicitly depend on characterising the effect of heavy tails, and on the chosen level of truncation. We also propose a consistent criterion for determining the number of factors. Simulation studies and applications to two macroeconomic datasets demonstrate the good performance of the proposed estimators.
2026
Barigozzi, M., Cho, H., Maeng, H. (2026). Tail-robust factor modelling of vector and tensor time series in high dimensions. BIOMETRIKA, 113(2), 1-20 [10.1093/biomet/asaf093].
Barigozzi, Matteo; Cho, Haeran; Maeng, Hyeyoung
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1035656
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