Lexicographic Optimization: Algorithms and Stability
Abstract: A lexicographic maximum of a set $X \subseteq \mathbb{R}n$ is a vector in $X$ whose smallest component is as large as possible, and subject to that requirement, whose second smallest component is as large as possible, and so on for the third smallest component, etc. Lexicographic maximization has numerous practical and theoretical applications, including fair resource allocation, analyzing the implicit regularization of learning algorithms, and characterizing refinements of game-theoretic equilibria. We prove that a minimizer in $X$ of the exponential loss function $L_c(\mathbf{x}) = \sum_i \exp(-c x_i)$ converges to a lexicographic maximum of $X$ as $c \rightarrow \infty$, provided that $X$ is stable in the sense that a well-known iterative method for finding a lexicographic maximum of $X$ cannot be made to fail simply by reducing the required quality of each iterate by an arbitrarily tiny degree. Our result holds for both near and exact minimizers of the exponential loss, while earlier convergence results made much stronger assumptions about the set $X$ and only held for the exact minimizer. We are aware of no previous results showing a connection between the iterative method for computing a lexicographic maximum and exponential loss minimization. We show that every convex polytope is stable, but that there exist compact, convex sets that are not stable. We also provide the first analysis of the convergence rate of an exponential loss minimizer (near or exact) and discover a curious dichotomy: While the two smallest components of the vector converge to the lexicographically maximum values very quickly (at roughly the rate $\frac{\log n}{c}$), all other components can converge arbitrarily slowly.
- On frank-wolfe and equilibrium computation. Advances in Neural Information Processing Systems, 30.
- Truthful cake sharing. In Proceedings of the AAAI Conference on Artificial Intelligence, volume 36, pages 4809–4817.
- Data networks. Athena Scientific.
- Lexicographically fair learning: Algorithms and generalization. In 2nd Symposium on Foundations of Responsible Computing, page 1.
- Dresher, M. (1961). The mathematics of games of strategy: Theory and applications prentice-hall. Englewood Cliffs, NJ.
- Adaptive game playing using multiplicative weights. Games and Economic Behavior, 29:79–103.
- Leximin approximation: From single-objective to multi-objective.
- Hayden, H. P. (1981). Voice flow control in integrated packet networks. PhD thesis, Massachusetts Institute of Technology.
- Leximax approximations and representative cohort selection. arXiv preprint arXiv:2205.01157.
- Le Boudec, J.-Y. (2000). Rate adaptation, congestion control and fairness: A tutorial. Ecole Polytechnique Federale de Lausanne.
- The weighted majority algorithm. Information and computation, 108(2):212–261.
- Luss, H. (1999). On equitable resource allocation problems: A lexicographic minimax approach. Operations Research, 47(3):361–378.
- Resource allocation among competing activities: A lexicographic minimax approach. Operations Research Letters, 5(5):227–231.
- Lexicographical separation in rn. Linear Algebra and Its Applications, 90:147–163.
- Computing proper equilibria of zero-sum games. In International Conference on Computers and Games, pages 200–211. Springer.
- Fair end-to-end window-based congestion control. In Lai, W. S. and Cooper, R. B., editors, Performance and Control of Network Systems II, volume 3530, pages 55 – 63. International Society for Optics and Photonics, SPIE.
- Lexicographic and depth-sensitive margins in homogeneous and non-homogeneous deep models. In International Conference on Machine Learning, pages 4683–4692. PMLR.
- Rockafellar, R. T. (1970). Convex Analysis. Princeton University Press.
- Boosting as a regularized path to a maximum margin classifier. J. Mach. Learn. Res., 5:941–973.
- Schmeidler, D. (1969). The nucleolus of a characteristic function game. SIAM Journal on applied mathematics, 17(6):1163–1170.
- Preemptive and nonpreemptive multi-objective programming: Relationship and counterexamples. Journal of Optimization Theory and Applications, 39:173–186.
- Syed, U. A. (2010). Reinforcement learning without rewards. Ph.D. Thesis.
- Van Damme, E. (1991). Stability and perfection of Nash equilibria, volume 339. Springer.
- Von Neumann, J. (1928). Zur theorie der gesellschaftsspiele. Mathematische annalen, 100(1):295–320.
- No-regret dynamics in the fenchel game: A unified framework for algorithmic convex optimization. Mathematical Programming, pages 1–66.
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