Convergence of Gradient Methods with Deterministic and Bounded Noise

Hansi K. Abeynanda, G. Lanel
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Abstract

In this paper, we analyse the effects of noise on the gradient methods for solving a convex unconstraint optimization problem. Assuming that the objective function is with Lipschitz continuous gradients, we analyse the convergence properties of the gradient method when the noise is deterministic and bounded. Our theoretical results show that the gradient algorithm converges to the related optimality within some tolerance, where the tolerance depends on the underlying noise, step size, and the gradient Lipschitz continuity constant of the underlying objective function. Moreover, we consider an application of distributed optimization, where the objective function is a sum of two strongly convex functions. Then the related convergences are discussed based on dual decomposition together with gradient methods, where the associated noise is considered as a consequence of quantization errors. Finally, the theoretical results are verified using numerical experiments. Keywords: The gradient method; deterministic and bounded noise; distributed optimization; dual decomposition
确定性和有界噪声梯度方法的收敛性
在本文中,我们分析了噪声对求解凸无约束优化问题的梯度方法的影响。假设目标函数具有Lipschitz连续梯度,分析了梯度法在噪声确定性和有界情况下的收敛性。我们的理论结果表明,梯度算法在一定的容差范围内收敛到相关的最优性,其中容差取决于底层噪声、步长和底层目标函数的梯度Lipschitz连续常数。此外,我们考虑了分布式优化的一个应用,其中目标函数是两个强凸函数的和。然后讨论了基于对偶分解和梯度方法的相关收敛性,其中相关噪声被认为是量化误差的结果。最后,通过数值实验对理论结果进行了验证。关键词:梯度法;确定性和有界噪声;分布式优化;对偶分解
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