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A Newton-CG based barrier method for finding a second-order stationary point of nonconvex conic optimization with complexity guarantees

12 July 2022
Chuan He
Zhaosong Lu
ArXiv (abs)PDFHTML
Abstract

In this paper we consider finding an approximate second-order stationary point (SOSP) of nonconvex conic optimization that minimizes a twice differentiable function over the intersection of an affine subspace and a convex cone. In particular, we propose a Newton-conjugate gradient (Newton-CG) based barrier method for finding an (ϵ,ϵ)(\epsilon,\sqrt{\epsilon})(ϵ,ϵ​)-SOSP of this problem. Our method is not only implementable, but also achieves an iteration complexity of O(ϵ−3/2){\cal O}(\epsilon^{-3/2})O(ϵ−3/2), which matches the best known iteration complexity of second-order methods for finding an (ϵ,ϵ)(\epsilon,\sqrt{\epsilon})(ϵ,ϵ​)-SOSP of unconstrained nonconvex optimization. The operation complexity, consisting of O(ϵ−3/2){\cal O}(\epsilon^{-3/2})O(ϵ−3/2) Cholesky factorizations and O~(ϵ−3/2min⁡{n,ϵ−1/4})\widetilde{\cal O}(\epsilon^{-3/2}\min\{n,\epsilon^{-1/4}\})O(ϵ−3/2min{n,ϵ−1/4}) other fundamental operations, is also established for our method.

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