The sparse dynamic factor model : a regularised quasi-maximum likelihood approach

Mosley, Luke and Chan, Tak-Shing and Gibberd, Alex (2024) The sparse dynamic factor model : a regularised quasi-maximum likelihood approach. Statistics and Computing, 34: 68. ISSN 0960-3174

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Abstract

The concepts of sparsity, and regularised estimation, have proven useful in many high-dimensional statistical applications. Dynamic factor models (DFMs) provide a parsimonious approach to modelling high-dimensional time series, however, it is often hard to interpret the meaning of the latent factors. This paper formally introduces a class of sparse DFMs whereby the loading matrices are constrained to have few non-zero entries, thus increasing interpretability of factors. We present a regularised M-estimator for the model parameters, and construct an efficient expectation maximisation algorithm to enable estimation. Synthetic experiments demonstrate consistency in terms of estimating the loading structure, and superior predictive performance where a low-rank factor structure may be appropriate. The utility of the method is further illustrated in an application forecasting electricity consumption across a large set of smart meters.

Item Type:
Journal Article
Journal or Publication Title:
Statistics and Computing
Uncontrolled Keywords:
Research Output Funding/yes_externally_funded
Subjects:
?? yes - externally fundednocomputational theory and mathematicstheoretical computer sciencestatistics and probabilitystatistics, probability and uncertainty ??
ID Code:
214403
Deposited By:
Deposited On:
09 Feb 2024 15:55
Refereed?:
Yes
Published?:
Published
Last Modified:
24 Apr 2024 01:40