2023
DOI: 10.48550/arxiv.2301.02268
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Restarts subject to approximate sharpness: A parameter-free and optimal scheme for first-order methods

Abstract: Sharpness is an almost generic assumption in continuous optimization that bounds the distance from minima by objective function suboptimality. It leads to the acceleration of first-order methods via restarts. However, sharpness involves problem-specific constants that are typically unknown, and previous restart schemes reduce convergence rates. Moreover, such schemes are challenging to apply in the presence of noise or approximate model classes (e.g., in compressive imaging or learning problems), and typically… Show more

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