AN-SPS: Adaptive Sample Size Nonmonotone Line Search Spectral Projected Subgradient Method for Convex Constrained Optimization Problems
We consider convex optimization problems with a possibly nonsmooth objective function in the form of a mathematical expectation. The proposed framework (AN-SPS) employs Sample Average Approximations (SAA) to approximate the objective function, which is either unavailable or too costly to compute. Th...
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Zusammenfassung: | We consider convex optimization problems with a possibly nonsmooth objective
function in the form of a mathematical expectation. The proposed framework
(AN-SPS) employs Sample Average Approximations (SAA) to approximate the
objective function, which is either unavailable or too costly to compute. The
sample size is chosen in an adaptive manner, which eventually pushes the SAA
error to zero almost surely (a.s.). The search direction is based on a scaled
subgradient and a spectral coefficient, both related to the SAA function. The
step size is obtained via a nonmonotone line search over a predefined interval,
which yields a theoretically sound and practically efficient algorithm. The
method retains feasibility by projecting the resulting points onto a feasible
set. The a.s. convergence of AN-SPS method is proved without the assumption of
a bounded feasible set or bounded iterates. Preliminary numerical results on
Hinge loss problems reveal the advantages of the proposed adaptive scheme. In
addition, a study of different nonmonotone line search strategies in
combination with different spectral coefficients within AN-SPS framework is
also conducted, yielding some hints for future work. |
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DOI: | 10.48550/arxiv.2208.10616 |