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arxiv: 2211.08212 · v7 · pith:DAHMVJQXnew · submitted 2022-11-15 · 🧮 math.OC

A homogeneous second-order descent method for nonconvex optimization

classification 🧮 math.OC
keywords methodsecond-orderconvergencedescentepsilonhomogeneoushsodmother
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In this paper, we introduce a Homogeneous Second-Order Descent Method (HSODM) using the homogenized quadratic approximation to the original function. The merit of homogenization is that only the leftmost eigenvector of a gradient-Hessian integrated matrix is computed at each iteration. Therefore, the algorithm is a single-loop method that does not need to switch to other sophisticated algorithms and is easy to implement. We show that HSODM has a global convergence rate of $O(\epsilon^{-3/2})$ to find an $\epsilon$-approximate second-order stationary point, and has a local quadratic convergence rate under the standard assumptions. The numerical results demonstrate the advantage of the proposed method over other second-order methods.

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