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A branch and bound algorithm for the global optimization of Hessian Lipschitz continuous functions

机译:Hessian Lipschitz连续函数全局优化的分支定界算法

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摘要

We present a branch and bound algorithm for the global optimization of a twice differentiable nonconvex objective function with a Lipschitz continuous Hessian over a compact, convex set. The algorithm is based on applying cubic regularisation techniques to the objective function within an overlapping branch and bound algorithm for convex constrained global optimization. Unlike other branch and bound algorithms, lower bounds are obtained via nonconvex underestimators of the function. For a numerical example, we apply the proposed branch and bound algorithm to radial basis function approximations.
机译:我们提出了一个分支定界算法,用于在紧凑,凸集上使用​​Lipschitz连续Hessian进行二次可微非凸目标函数的全局优化。该算法基于将三次正则化技术应用于重叠分支定界算法中目标函数的凸约束全局优化。与其他分支定界算法不同,下界是通过函数的非凸低估量获得的。对于一个数值示例,我们将提出的分支定界算法应用于径向基函数逼近。

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