Adaptive Zeroth-Order Optimisation of Nonconvex Composite Objectives

Weijia Shao, S. Albayrak
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Abstract

In this paper, we propose and analyze algorithms for zeroth-order optimization of non-convex composite objectives, focusing on reducing the complexity dependence on dimensionality. This is achieved by exploiting the low dimensional structure of the decision set using the stochastic mirror descent method with an entropy alike function, which performs gradient descent in the space equipped with the maximum norm. To improve the gradient estimation, we replace the classic Gaussian smoothing method with a sampling method based on the Rademacher distribution and show that the mini-batch method copes with the non-Euclidean geometry. To avoid tuning hyperparameters, we analyze the adaptive stepsizes for the general stochastic mirror descent and show that the adaptive version of the proposed algorithm converges without requiring prior knowledge about the problem.
非凸复合目标的自适应零阶优化
在本文中,我们提出并分析了非凸复合目标的零阶优化算法,重点是降低复杂度对维数的依赖。这是通过使用具有熵相似函数的随机镜像下降方法利用决策集的低维结构来实现的,该方法在具有最大范数的空间中执行梯度下降。为了改进梯度估计,我们用基于Rademacher分布的抽样方法取代了经典的高斯平滑方法,并证明了小批量方法可以处理非欧几里得几何。为了避免调优超参数,我们分析了一般随机镜像下降的自适应步长,并证明了所提出算法的自适应版本在不需要先验知识的情况下收敛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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