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Ensuring Smoothly Navigable Approximation Sets by Bezier Curve Parameterizations in Evolutionary Bi-objective Optimization

机译:在演化双目标优化中通过Bezier曲线参数化确保平滑可导航的逼近集

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The aim of bi-objective optimization is to obtain an approximation set of (near) Pareto optimal solutions. A decision maker then navigates this set to select a final desired solution, often using a visualization of the approximation front. The front provides a navigational ordering of solutions to traverse, but this ordering does not necessarily map to a smooth trajectory through decision space. This forces the decision maker to inspect the decision variables of each solution individually, potentially making navigation of the approximation set unintuitive. In this work, we aim to improve approximation set navigability by enforcing a form of smoothness or continuity between solutions in terms of their decision variables. Imposing smoothness as a restriction upon common domination-based multi-objective evolutionary algorithms is not straightforward. Therefore, we use the recently introduced uncrowded hypervolume (UHV) to reformulate the multi-objective optimization problem as a single-objective problem in which parameterized approximation sets are directly optimized. We study here the case of parameterizing approximation sets as smooth Bezier curves in decision space. We approach the resulting single-objective problem with the gene-pool optimal mixing evolutionary algorithm (GOMEA), and we call the resulting algorithm BezEA. We analyze the behavior of BezEA and compare it to optimization of the UHV with GOMEA as well as the domination-based multi-objective GOMEA. We show that high-quality approximation sets can be obtained with BezEA, sometimes even outperforming the domination- and UHV-based algorithms, while smoothness of the navigation trajectory through decision space is guaranteed.
机译:双目标优化的目的是获得(接近)帕累托最优解的近似集。然后,决策者通常使用可视化近似前沿来导航此集合以选择最终所需的解决方案。前部提供了遍历解决方案的导航顺序,但是该顺序不一定映射到决策空间中的平滑轨迹。这迫使决策者单独检查每个解决方案的决策变量,从而可能使逼近集的导航不直观。在这项工作中,我们旨在通过在解决方案之间根据决策变量强制采用某种形式的平滑度或连续性,从而提高近似集的可导航性。将平滑性作为对基于控制的通用多目标进化算法的限制并不是一件容易的事。因此,我们使用最近引入的非拥挤超体积(UHV)将多目标优化问题重新表述为直接优化参数化近似集的单目标问题。我们在这里研究在决策空间中将逼近集参数化为平滑Bezier曲线的情况。我们使用基因池最优混合进化算法(GOMEA)来解决由此产生的单目标问题,并将这种算法称为BezEA。我们分析了BezEA的行为,并将其与使用GOMEA以及基于控制的多目标GOMEA进行的特高压优化进行了比较。我们表明,使用BezEA可以获得高质量的近似集,有时甚至优于基于控制和特高压的算法,同时可以确保通过决策空间的导航轨迹的平滑性。

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