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Log-Linear Convergence and Divergence of the Scale-Invariant (1+1)-ES in Noisy Environments

机译:嘈杂环境中尺度不变(1 + 1)-ES的对数线性收敛和发散

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摘要

Noise is present in many real-world continuous optimization problems. Stochastic search algorithms such as Evolution Strategies (ESs) have been proposed as effective search methods in such contexts. In this paper, we provide a mathematical analysis of the convergence of a (1+1)-ES on unimodal spherical objective functions in the presence of noise. We prove for a multiplicative noise model that for a positive expected value of the noisy objective function, convergence or divergence happens depending on the infimum of the support of the noise. Moreover, we investigate convergence rates and show that log-linear convergence is preserved in presence of noise. This result is a strong theoretical foundation of the robustness of ESs with respect to noise.
机译:在许多现实世界的连续优化问题中都存在噪声。在这种情况下,诸如进化策略(ES)之类的随机搜索算法已被提出作为有效的搜索方法。在本文中,我们提供了在存在噪声的情况下单峰球形目标函数上(1 + 1)-ES的收敛性的数学分析。我们证明了一个乘性噪声模型,对于噪声目标函数的正期望值,会根据噪声支持的最小值发生收敛或发散。此外,我们研究了收敛速度,并表明在存在噪声的情况下保留了对数线性收敛。该结果是ES相对于噪声的鲁棒性的强大理论基础。

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