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arxiv: 2603.17053 · v3 · pith:CNJLO6T2new · submitted 2026-03-17 · 🧮 math.OC

Stronger constraints for smooth min-max games

classification 🧮 math.OC
keywords methodsproblemssmoothconstraintsconvex-concavefirst-orderfunctionsmin-max
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Saddle point problems with smooth convex-concave objective functions are often used to model min-max problems arising in machine learning. First-order methods are the standard paradigm for solving such problems. Therefore, it is important to know how those methods behave in the worst-case scenarios. In order to derive the guarantees, one would require the inequalities that appropriately constrain the iterates, gradients and function values. In this paper, we present stronger constraints for smooth convex-concave functions and show that they could allow tighter upper bounds for first-order methods.

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  1. Negative Momentum for Convex-Concave Optimization

    math.OC 2026-04 unverdicted novelty 7.0

    Negative momentum enables global convergence in convex-concave min-max optimization and accelerated rates in the strongly-convex-strongly-concave setting.