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Designing and Comparing Multiple Portfolios of Parameter Configurations for Online Algorithm Selection

机译:在线算法选择的参数配置的设计和比较多个组合

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Algorithm portfolios seek to determine an effective set of algorithms that can be used within an algorithm selection framework to solve problems. A limited number of these portfolio studies focus on generating different versions of a target algorithm using different parameter configurations. In this paper, we employ a Design of Experiments (DOE) approach to determine a promising range of values for each parameter of an algorithm. These ranges are further processed to determine a portfolio of parameter configurations, which would be used within two online Algorithm Selection approaches for solving different instances of a given combinatorial optimization problem effectively. We apply our approach on a Simulated Annealing-Tabu Search (SA-TS) hybrid algorithm for solving the Quadratic Assignment Problem (QAP) as well as an Iterated Local Search (ILS) on the Travelling Salesman Problem (TSP). We also generate a portfolio of parameter configurations using best-of-breed parameter tuning approaches directly for the comparison purpose. Experimental results show that our approach lead to improvements over best-of-breed parameter tuning approaches.
机译:算法投资组合寻求确定可以在算法选择框架内使用的有效算法来解决问题。有限数量的这些产品组合研究专注于使用不同的参数配置生成目标算法的不同版本。在本文中,我们采用了实验(DOE)方法的设计来确定算法的每个参数的有希望的值范围。进一步处理这些范围以确定参数配置的组合,这将在两个在线算法选择方法中使用,以有效地解决给定的组合优化问题的不同实例。我们在模拟退火禁忌搜索(SA-TS)混合算法上应用我们的方法,用于解决旅行推销员问题(TSP)上的二次分配问题(QAP)以及迭代本地搜索(ILS)。我们还使用最佳参数调整方法为比较目的生成最佳参数调谐方法的参数配置组合。实验结果表明,我们的方法导致改善最佳的参数调整方法。

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