The appeals of quadratic majorization–minimization

Majorization–minimization (MM) is a versatile optimization technique that operates on surrogate functions satisfying tangency and domination conditions. Our focus is on differentiable optimization using inexact MM with quadratic surrogates, which amounts to approximately solving a sequence of symmet...

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Veröffentlicht in:Journal of global optimization 2024-07, Vol.89 (3), p.509-558
Hauptverfasser: Robini, Marc C., Wang, Lihui, Zhu, Yuemin
Format: Artikel
Sprache:eng
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Zusammenfassung:Majorization–minimization (MM) is a versatile optimization technique that operates on surrogate functions satisfying tangency and domination conditions. Our focus is on differentiable optimization using inexact MM with quadratic surrogates, which amounts to approximately solving a sequence of symmetric positive definite systems. We begin by investigating the convergence properties of this process, from subconvergence to R-linear convergence, with emphasis on tame objectives. Then we provide a numerically stable implementation based on truncated conjugate gradient. Applications to multidimensional scaling and regularized inversion are discussed and illustrated through numerical experiments on graph layout and X-ray tomography. In the end, quadratic MM not only offers solid guarantees of convergence and stability, but is robust to the choice of its control parameters.
ISSN:0925-5001
1573-2916
DOI:10.1007/s10898-023-01361-1