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Perseus: A Simple and Optimal High-Order Method for Variational Inequalities

6 May 2022
Tianyi Lin
Michael I. Jordan
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Abstract

This paper settles an open and challenging question pertaining to the design of simple and optimal high-order methods for solving smooth and monotone variational inequalities (VIs). A VI involves finding x⋆∈Xx^\star \in \mathcal{X}x⋆∈X such that ⟨F(x),x−x⋆⟩≥0\langle F(x), x - x^\star\rangle \geq 0⟨F(x),x−x⋆⟩≥0 for all x∈Xx \in \mathcal{X}x∈X. We consider the setting in which FFF is smooth with up to (p−1)th(p-1)^{th}(p−1)th-order derivatives. For p=2p = 2p=2, the cubic regularized Newton method was extended to VIs with a global rate of O(ϵ−1)O(\epsilon^{-1})O(ϵ−1). An improved rate of O(ϵ−2/3log⁡log⁡(1/ϵ))O(\epsilon^{-2/3}\log\log(1/\epsilon))O(ϵ−2/3loglog(1/ϵ)) can be obtained via an alternative second-order method, but this method requires a nontrivial line-search procedure as an inner loop. Similarly, high-order methods based on line-search procedures have been shown to achieve a rate of O(ϵ−2/(p+1)log⁡log⁡(1/ϵ))O(\epsilon^{-2/(p+1)}\log\log(1/\epsilon))O(ϵ−2/(p+1)loglog(1/ϵ)). As emphasized by Nesterov, however, such procedures do not necessarily imply practical applicability in large-scale applications, and it would be desirable to complement these results with a simple high-order VI method that retains the optimality of the more complex methods. We propose a pthp^{th}pth-order method that does \textit{not} require any line search procedure and provably converges to a weak solution at a rate of O(ϵ−2/(p+1))O(\epsilon^{-2/(p+1)})O(ϵ−2/(p+1)). We prove that our pthp^{th}pth-order method is optimal in the monotone setting by establishing a matching lower bound under a generalized linear span assumption. Our method with restarting attains a linear rate for smooth and uniformly monotone VIs and a local superlinear rate for smooth and strongly monotone VIs. Our method also achieves a global rate of O(ϵ−2/p)O(\epsilon^{-2/p})O(ϵ−2/p) for solving smooth and nonmonotone VIs satisfying the Minty condition and when augmented with restarting it attains a global linear and local superlinear rate for smooth and nonmonotone VIs satisfying the uniform/strong Minty condition.

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