A unified majorization framework and double-scaling bound enhancement yield stronger convex relaxations for the NP-hard maximum entropy sampling problem, with proven dominance over linx and Gamma factorization methods and superior numerical performance.
Parameter-Free Non-Ergodic Extragradient Algorithms for Solving Monotone Variational Inequalities
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abstract
Monotone variational inequalities (VIs) provide a unifying framework for convex minimization, equilibrium computation, and convex-concave saddle-point problems. Extragradient-type methods are among the most effective first-order algorithms for such problems, but their performance hinges critically on stepsize selection. While most existing theory focuses on ergodic averages of the iterates, practical performance is often driven by the significantly stronger behavior of the last iterate. Moreover, available last-iterate guarantees typically rely on fixed stepsizes chosen using problem-specific global smoothness information, which is often difficult to estimate accurately and may not even be applicable. In this paper, we develop parameter-free extragradient methods with non-asymptotic last-iterate guarantees for constrained monotone VIs. For globally Lipschitz operators, our algorithm achieves an $o(1/\sqrt{T})$ last-iterate rate. We then extend the framework to locally Lipschitz operators via backtracking line search and obtain the same rate while preserving parameter-freeness, thereby making parameter-free last-iterate methods applicable to important problem classes for which global smoothness is unrealistic. Our numerical experiments on bilinear matrix games, LASSO, minimax group fairness, and state-of-the-art maximum entropy sampling relaxations demonstrate wide applicability of our results as well as strong last-iterate performance and significant improvements over existing methods.
fields
math.OC 2years
2026 2verdicts
UNVERDICTED 2representative citing papers
Auto-conditioned Frank-Wolfe methods use local Lipschitz estimators from first-order information to achieve convergence guarantees in convex and nonconvex settings without prior global smoothness knowledge.
citing papers explorer
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From Majorization to Scaling: Advancing Convex Relaxations of Maximum Entropy Sampling Problem
A unified majorization framework and double-scaling bound enhancement yield stronger convex relaxations for the NP-hard maximum entropy sampling problem, with proven dominance over linx and Gamma factorization methods and superior numerical performance.
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Auto-Conditioned Frank-Wolfe Algorithms
Auto-conditioned Frank-Wolfe methods use local Lipschitz estimators from first-order information to achieve convergence guarantees in convex and nonconvex settings without prior global smoothness knowledge.