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On the robustness of population-based versus point-based optimization in the presence of noise

机译:在存在噪声的情况下基于种群的优化与基于点的优化的鲁棒性

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摘要

Practical optimization problems often require the evaluation of solutions through experimentation, stochastic simulation, sampling, or even interaction with the user. Thus, most practical problems involve noise. We address the robustness of population-based versus point-based optimization on a range of parameter optimization problems when noise is added to the deterministic objective function values. Population-based optimization is realized by a genetic algorithm and an evolution strategy. Point-based optimization is implemented as the classical Hooke-Jeeves pattern search strategy and threshold accepting as a modern local search technique. We investigate the performance of these optimization methods for varying levels of additive normally distributed fitness-independent noise and different sample sizes for evaluating individual solutions. Our results strongly favour population-based optimization, and the evolution strategy in particular.
机译:实际的优化问题通常需要通过实验,随机模拟,采样甚至与用户交互来评估解决方案。因此,大多数实际问题涉及噪声。当将噪声添加到确定性目标函数值时,我们针对一系列参数优化问题解决了基于总体的优化与基于点的优化的鲁棒性。通过遗传算法和进化策略来实现基于种群的优化。基于点的优化被实现为经典的Hooke-Jeeves模式搜索策略,并且阈值被接受为现代的本地搜索技术。我们研究了这些优化方法在不同水平的加性正态分布独立于健身的噪声以及用于评估单个解决方案的不同样本量的性能。我们的结果强烈支持基于人口的优化,尤其是进化策略。

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