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

This paper settles an open and challenging question pertaining to the design of simple high-order regularization methods for solving smooth and monotone variational inequalities (VIs). A VI involves finding such that for all and we consider the setting where is smooth with up to -order derivatives. For ,~\citet{Nesterov-2006-Constrained} extended the cubic regularized Newton's method to VIs with a global rate of .~\citet{Monteiro-2012-Iteration} proposed another second-order method which achieved an improved rate of , but this method required a nontrivial binary search procedure as an inner loop. High-order methods based on similar binary search procedures have been further developed and shown to achieve a rate of . However, such search procedure can be computationally prohibitive in practice and the problem of finding a simple high-order regularization methods remains as an open and challenging question in optimization theory. We propose a -order method that does \textit{not} require any binary search procedure and prove that it can converge to a weak solution at a global rate of . A lower bound of is also established to show that our method is optimal in the monotone setting. A version with restarting attains a global linear and local superlinear convergence rate for smooth and strongly monotone VIs. Moreover, our method can achieve a global rate of for solving smooth and non-monotone VIs satisfying the Minty condition; moreover, the restarted version again attains a global linear and local superlinear convergence rate if the strong Minty condition holds.
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