Spectral estimators for structured generalized linear models via approximate message passing
Zhang Y, Ji HC, Venkataramanan R, Mondelli M. 2025. Spectral estimators for structured generalized linear models via approximate message passing. Mathematical Statistics and Learning. 8(3–4), 193–304.
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Corresponding author has ISTA affiliation
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Abstract
We consider the problem of parameter estimation in a high-dimensional generalized linear model. Spectral methods obtained via the principal eigenvector of a suitable data-dependent matrix provide a simple yet surprisingly effective solution. However, despite their wide use, a rigorous performance characterization, as well as a principled way to preprocess the data, are available only for unstructured (i.i.d. Gaussian and Haar orthogonal) designs. In contrast, real-world data matrices are highly structured and exhibit non-trivial correlations. To address the problem, we consider correlated Gaussian designs capturing the anisotropic nature of the features via a covariance matrix Σ. Our main result is a precise asymptotic characterization of the performance of spectral estimators. This allows us to identify the optimal preprocessing that minimizes the number of samples needed for parameter estimation. Surprisingly, such preprocessing is universal across a broad set of designs, which partly addresses a conjecture on optimal spectral estimators for rotationally invariant models. Our principled approach vastly improves upon previous heuristic methods, including for designs common in computational imaging and genetics. The proposed methodology, based on approximate message passing, is broadly applicable and opens the way to the precise characterization of spiked matrices and of the corresponding spectral methods in a variety of settings.
Publishing Year
Date Published
2025-09-02
Journal Title
Mathematical Statistics and Learning
Publisher
EMS Press
Acknowledgement
This work was done when Y. Z. and H. C. J. were at the Institute of Science and Technology Austria. Y. Z. thanks Hugo Latourelle-Vigeant for bringing [53] to the authors’ attention.
Y. Z. and M. M. are partially supported by the 2019 Lopez-Loreta Prize and by the Interdisciplinary Projects Committee (IPC) at ISTA. H. C. J. is supported by the ERC Advanced Grant “RMTBeyond” No. 101020331.
Volume
8
Issue
3-4
Page
193-304
ISSN
eISSN
IST-REx-ID
Cite this
Zhang Y, Ji HC, Venkataramanan R, Mondelli M. Spectral estimators for structured generalized linear models via approximate message passing. Mathematical Statistics and Learning. 2025;8(3-4):193-304. doi:10.4171/MSL/52
Zhang, Y., Ji, H. C., Venkataramanan, R., & Mondelli, M. (2025). Spectral estimators for structured generalized linear models via approximate message passing. Mathematical Statistics and Learning. EMS Press. https://doi.org/10.4171/MSL/52
Zhang, Yihan, Hong Chang Ji, Ramji Venkataramanan, and Marco Mondelli. “Spectral Estimators for Structured Generalized Linear Models via Approximate Message Passing.” Mathematical Statistics and Learning. EMS Press, 2025. https://doi.org/10.4171/MSL/52.
Y. Zhang, H. C. Ji, R. Venkataramanan, and M. Mondelli, “Spectral estimators for structured generalized linear models via approximate message passing,” Mathematical Statistics and Learning, vol. 8, no. 3–4. EMS Press, pp. 193–304, 2025.
Zhang Y, Ji HC, Venkataramanan R, Mondelli M. 2025. Spectral estimators for structured generalized linear models via approximate message passing. Mathematical Statistics and Learning. 8(3–4), 193–304.
Zhang, Yihan, et al. “Spectral Estimators for Structured Generalized Linear Models via Approximate Message Passing.” Mathematical Statistics and Learning, vol. 8, no. 3–4, EMS Press, 2025, pp. 193–304, doi:10.4171/MSL/52.
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