随机约束优化的分布式无梯度和无投影算法

Jie Hou, Xianlin Zeng, Chen Chen
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引用次数: 0

摘要

分布式随机零阶优化(DSZO)在大规模机器学习和强化学习中经常出现,其目标函数被分配给多个代理,且成本函数的导数不可用。本文通过弗兰克-沃尔夫(Frank-Wolfe)框架和随机零阶神谕(SZO),以无投影和无梯度的方式介绍了一种针对 DSZO 的分布式随机算法。在计算梯度或投影算子不切实际、成本高昂或目标函数并非处处可微分的大规模约束优化问题中,这种方案尤其有用。具体来说,所提出的算法通过递归动量和梯度跟踪技术得到了增强,保证了每次迭代只需一个批次就能收敛。与现有算法相比,这一重大改进大大降低了计算复杂度。在温和的条件下,我们证明了所提算法在凸和非凸情况下的 SZO 复杂度边界分别为 (\mathcal{O}(n/\epsilon ^{2})\)和 (\mathcal{O}(n(2^{frac{1}{epsilon}}))\)。在黑箱二元分类问题上,该算法的有效性得到了验证,并与几种竞争性替代方案进行了比较。
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Distributed gradient-free and projection-free algorithm for stochastic constrained optimization

Distributed stochastic zeroth-order optimization (DSZO), in which the objective function is allocated over multiple agents and the derivative of cost functions is unavailable, arises frequently in large-scale machine learning and reinforcement learning. This paper introduces a distributed stochastic algorithm for DSZO in a projection-free and gradient-free manner via the Frank-Wolfe framework and the stochastic zeroth-order oracle (SZO). Such a scheme is particularly useful in large-scale constrained optimization problems where calculating gradients or projection operators is impractical, costly, or when the objective function is not differentiable everywhere. Specifically, the proposed algorithm, enhanced by recursive momentum and gradient tracking techniques, guarantees convergence with just a single batch per iteration. This significant improvement over existing algorithms substantially lowers the computational complexity. Under mild conditions, we prove that the complexity bounds on SZO of the proposed algorithm are \(\mathcal{O}(n/\epsilon ^{2})\) and \(\mathcal{O}(n(2^{\frac{1}{\epsilon}}))\) for convex and nonconvex cases, respectively. The efficacy of the algorithm is verified on black-box binary classification problems against several competing alternatives.

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