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Massachusetts Institute of Technology Press, Evolutionary Computation, 2(26), p. 237-267, 2018

DOI: 10.1162/evco_a_00201

Springer, Lecture Notes in Computer Science, p. 302-311, 2014

DOI: 10.1007/978-3-319-10762-2_30

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On the Effectiveness of Sampling for Evolutionary Optimization in Noisy Environments

Journal article published in 2014 by Chao Qian, Yang Yu, Ke Tang, Yaochu Jin ORCID, Xin Yao, Zhi-Hua Zhou
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

In real-world optimization tasks, the objective (i.e., fitness) function evaluation is often disturbed by noise due to a wide range of uncertainties. Evolutionary algorithms are often employed in noisy optimization, where reducing the negative effect of noise is a crucial issue. Sampling is a popular strategy for dealing with noise: to estimate the fitness of a solution, it evaluates the fitness multiple ([Formula: see text]) times independently and then uses the sample average to approximate the true fitness. Obviously, sampling can make the fitness estimation closer to the true value, but also increases the estimation cost. Previous studies mainly focused on empirical analysis and design of efficient sampling strategies, while the impact of sampling is unclear from a theoretical viewpoint. In this article, we show that sampling can speed up noisy evolutionary optimization exponentially via rigorous running time analysis. For the (1[Formula: see text]1)-EA solving the OneMax and the LeadingOnes problems under prior (e.g., one-bit) or posterior (e.g., additive Gaussian) noise, we prove that, under a high noise level, the running time can be reduced from exponential to polynomial by sampling. The analysis also shows that a gap of one on the value of [Formula: see text] for sampling can lead to an exponential difference on the expected running time, cautioning for a careful selection of [Formula: see text]. We further prove by using two illustrative examples that sampling can be more effective for noise handling than parent populations and threshold selection, two strategies that have shown to be robust to noise. Finally, we also show that sampling can be ineffective when noise does not bring a negative impact.