A-A*pex: Efficient Anytime Approximate Multi-Objective Search

Han Zhang, Oren Salzman, Ariel Felner, Carlos Hernández Ulloa, Sven Koenig
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Abstract

In the multi-objective search problem, a typical task is to compute the Pareto frontier, i.e., the set of all undominated solutions. However, computing the entire Pareto frontier can be very time-consuming, and in practice, we often have limited deliberation time. Therefore, this paper focuses on solving the multi-objective search problem with anytime algorithms, which compute an initial approximate frontier quickly and then work to find more solutions until eventually finding the entire Pareto frontier. Existing work has investigated such anytime algorithms for problem instances with only two objectives. In this paper, we propose Anytime A*pex (A-A*pex), which works with any number of objectives. In each iteration of A-A*pex, it runs A*pex, a state-of-the-art approximate multi-objective search algorithm, to compute more solutions. From one iteration to the next, A-A*pex can either reuse its previous search effort or restart from scratch. Our experimental results show that an A-A*pex variant that mixes reusing its search effort and restarting from scratch yields the best runtime performance. We also show that A-A*pex often computes solutions that collectively approximate the Pareto frontier much better than the solutions found by state-of-the-art multi-objective search algorithms for short deliberation times.
A-A*pex:高效的随时近似多目标搜索
在多目标搜索问题中,一个典型的任务是计算帕累托前沿,即所有无支配解的集合。然而,计算整个帕累托前沿可能非常耗时,而在实际操作中,我们的审议时间往往有限。因此,本文重点研究用随时算法解决多目标搜索问题,这种算法可以快速计算初始近似前沿,然后寻找更多的解,直到最终找到整个帕累托前沿。现有的工作已经针对只有两个目标的问题实例研究了这种随时算法。在本文中,我们提出了随时 A*pex (A-A*pex),它适用于任意数量的目标。在 A-A*pex 的每次迭代中,它都会运行最先进的近似多目标搜索算法 A*pex,以计算出更多解决方案。从一次迭代到下一次迭代,A-A*pex 可以重复使用之前的搜索努力,也可以从头开始。我们的实验结果表明,A-A*pex 变体将重复使用搜索努力和从头开始混合在一起,能产生最佳的运行性能。我们还发现,A-A*pex 计算出的解决方案往往能在较短的商议时间内,比最先进的多目标搜索算法找到的解决方案更接近帕累托前沿。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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