Incremental Subgradient Methods for Minimizing The Sum of Quasi-convex Functions
Yaohua Hu, Carisa Kwok Wai Yu, Xiaoqi Yang

TL;DR
This paper introduces incremental subgradient methods for minimizing sums of nondifferentiable quasi-convex functions, including the sum of ratios problem, with proven convergence and applications demonstrating efficiency in large-scale problems.
Contribution
It develops new incremental and randomized subgradient algorithms for complex quasi-convex sum minimization, extending beyond traditional quasi-convex optimization.
Findings
Algorithms converge to global optima under various stepsize rules.
Proposed methods are effective for large-scale sum of ratios problems.
Numerical results confirm computational efficiency and practical applicability.
Abstract
The sum of ratios problem has a variety of important applications in economics and management science, but it is difficult to globally solve this problem. In this paper, we consider the minimization problem of a sum of a number of nondifferentiable quasi-convex component functions over a closed and convex set, which includes the sum of ratios problem as a special case. The sum of quasi-convex component functions is not necessarily to be quasi-convex, and so, this study goes beyond quasi-convex optimization. Exploiting the structure of the sum-minimization problem, we propose a new incremental subgradient method for this problem and investigate its convergence properties to a global optimal solution when using the constant, diminishing or dynamic stepsize rules and under a homogeneous assumption and the H\"{o}lder condition of order . To economize on the computation cost of…
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