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Efficient implementation of enhanced adaptive simultaneous perturbation algorithms

机译:增强型自适应同时摄动算法的有效实现

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Stochastic approximation (SA) applies in both the gradient-free optimization (Kiefer-Wolfowitz) and the gradient-based setting (Robbins-Monro). The idea of simultaneous perturbation (SP) has been well established. This paper discusses an efficient way of implementing both the adaptive Newton-like SP algorithms and their enhancements (feedback and optimal weighting incorporated), using the Woodbury matrix identity, a.k.a. matrix inversion lemma. Basically, instead of estimating the Hessian matrix directly, this paper deals with the estimation of the inverse of the Hessian matrix. Furthermore, the preconditioning steps, which are required in early iterations to maintain positive-definiteness of the Hessian estimates, are imposed on the Hessian inverse rather than the Hessian itself. Numerical results also demonstrate the superiority of this efficient implementation on Newton-like SP algorithms.
机译:随机近似(SA)适用于无梯度优化(Kiefer-Wolfowitz)和基于梯度的设置(Robbins-Monro)。同步摄动(SP)的思想已经很成熟。本文讨论了使用伍德伯里矩阵恒等式(又称矩阵求逆引理)来实现自适应牛顿SP算法及其增强功能(结合了反馈和最佳加权)的有效方法。基本上,不是直接估计Hessian矩阵,而是处理Hessian矩阵的逆估计。此外,为保持Hessian估计值的正定性而在早期迭代中需要的预处理步骤被施加于Hessian逆而不是Hessian本身。数值结果也证明了这种有效的实现方法在类牛顿SP算法上的优越性。

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