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Hybrid Dynamic Resampling Algorithms for Evolutionary Multi-objective Optimization of Invariant-Noise Problems

机译:杂交动态重采样算法,用于不变噪声问题的进化多目标优化

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In Simulation-based Evolutionary Multi-objective Optimization (EMO) the available time for optimization usually is limited. Since many real-world optimization problems are stochastic models, the optimization algorithm has to employ a noise compensation technique for the objective values. This article analyzes Dynamic Resampling algorithms for handling the objective noise. Dynamic Resampling improves the objective value accuracy by spending more time to evaluate the solutions multiple times, which tightens the optimization time limit even more. This circumstance can be used to design Dynamic Resampling algorithms with a better sampling allocation strategy that uses the time limit. In our previous work, we investigated Time-based Hybrid Resampling algorithms for Preference-based EMO. In this article, we extend our studies to general EMO which aims to find a converged and diverse set of alternative solutions along the whole Pareto-front of the problem. We focus on problems with an invariant noise level, i.e. a flat noise landscape.
机译:在基于仿真的进化多目标优化(EMO)中,优化的可用时间通常是有限的。由于许多现实世界优化问题是随机模型,因此优化算法必须采用目标值的噪声补偿技术。本文分析了处理客观噪声的动态重采样算法。动态重采样通过花更多时间来提高目标值准确性,以多次评估解决方案,这更加收紧优化时间限制。这种情况可用于设计具有使用时间限制的更好的采样分配策略来设计动态重采样算法。在我们以前的工作中,我们调查了基于偏好的EMO的基于时间的混合重采样算法。在本文中,我们将我们的研究扩展到通用EMO,旨在沿着整个帕累托 - 前面找到一套融合和多样的替代解决方案。我们专注于不变噪音水平的问题,即扁平噪音景观。

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