cs.AI updates on arXiv.org 10月24日 12:21
零阶梯度估计器分布优化研究
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本文研究了零阶梯度估计器中随机扰动的分布,最小化估计器渐进方差,并提出了方向性扰动的优化方案,提高了梯度估计的准确性。

arXiv:2510.19975v1 Announce Type: cross Abstract: In this paper, we explore the two-point zeroth-order gradient estimator and identify the distribution of random perturbations that minimizes the estimator's asymptotic variance as the perturbation stepsize tends to zero. We formulate it as a constrained functional optimization problem over the space of perturbation distributions. Our findings reveal that such desired perturbations can align directionally with the true gradient, instead of maintaining a fixed length. While existing research has largely focused on fixed-length perturbations, the potential advantages of directional alignment have been overlooked. To address this gap, we delve into the theoretical and empirical properties of the directionally aligned perturbation (DAP) scheme, which adaptively offers higher accuracy along critical directions. Additionally, we provide a convergence analysis for stochastic gradient descent using $\delta$-unbiased random perturbations, extending existing complexity bounds to a wider range of perturbations. Through empirical evaluations on both synthetic problems and practical tasks, we demonstrate that DAPs outperform traditional methods under specific conditions.

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梯度估计 优化算法 随机扰动
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