OCGTLGDSNAMay 6, 2024

A Symplectic Analysis of Alternating Mirror Descent

arXiv:2405.03472v42 citations
Originality Incremental advance
AI Analysis

This provides theoretical insights into optimization algorithms for game theory, but it is incremental as it builds on existing methods with specific mathematical refinements.

The paper tackled the analysis of the Alternating Mirror Descent algorithm for bilinear zero-sum games by studying its discretization via the symplectic Euler method, resulting in improved error bounds that show an O(K^{1/5}) total regret and O(K^{-4/5}) duality gap for average iterates.

Motivated by understanding the behavior of the Alternating Mirror Descent (AMD) algorithm for bilinear zero-sum games, we study the discretization of continuous-time Hamiltonian flow via the symplectic Euler method. We provide a framework for analysis using results from Hamiltonian dynamics, Lie algebra, and symplectic numerical integrators, with an emphasis on the existence and properties of a conserved quantity, the modified Hamiltonian (MH), for the symplectic Euler method. We compute the MH in closed-form when the original Hamiltonian is a quadratic function, and show that it generally differs from the other conserved quantity known previously in that case. We derive new error bounds on the MH when truncated at orders in the stepsize in terms of the number of iterations, $K$, and use these bounds to show an improved $\mathcal{O}(K^{1/5})$ total regret bound and an $\mathcal{O}(K^{-4/5})$ duality gap of the average iterates for AMD. Finally, we propose a conjecture which, if true, would imply that the total regret for AMD scales as $\mathcal{O}\left(K^{\varepsilon}\right)$ and the duality gap of the average iterates as $\mathcal{O}\left(K^{-1+\varepsilon}\right)$ for any $\varepsilon>0$, and we can take $\varepsilon=0$ upon certain convergence conditions for the MH.

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