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Trap Avoidance in Local Search Using Pseudo-Conflict Learning

机译:使用伪冲突学习在本地搜索中避免避免

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A key challenge in developing efficient local search solvers is to effectively minimise search stagnation (i.e. avoiding traps or local minima). A majority of the state-of-the-art local search solvers perform random and/or Novelty-based walks to overcome search stagnation. Although such strategies are effective in diversifying a search from its current local minimum, they do not actively prevent the search from visiting previously encountered local minima. In this paper, we propose a new preventative strategy to effectively minimise search stagnation using pseudo-conflict learning. We define a pseudo-conflict as a derived path from the search trajectory that leads to a local minimum. We then introduce a new variable selection scheme that penalises variables causing those pseudo-conflicts. Our experimental results show that the new preventative approach significantly improves the performance of local search solvers on a wide range of structured and random benchmarks.
机译:开发有效的本地搜索求解器的关键挑战是有效地减少搜索停滞(即避免陷阱或局部最小值)。大多数最先进的本地搜索索盘执行随机和/或新奇的散步,以克服搜索停滞。虽然此类策略在多样化当前本地最低限制的搜索方面有效,但它们不会积极地防止访问以前遇到的当地最小值的搜索。在本文中,我们提出了一种新的预防策略,以利用伪冲突学习有效地减少搜索停滞。我们将伪冲突定义为来自导致本地最小值的搜索轨迹的派生路径。然后,我们介绍一个新的变量选择方案,惩罚导致那些伪冲突的变量。我们的实验结果表明,新的预防方法显着提高了本地搜索求解器对各种结构和随机基准的性能。

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