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Fitness-AUC Bandit Adaptive Strategy Selection vs. the Probability Matching one within Differential Evolution

机译:Fitness-AUC强盗自适应策略选择与差异演化中的概率匹配之一

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The choice of which of the available strategies should be used within the Differential Evolution algorithm for a given problem is not trivial, besides being problem-dependent and very sensitive with relation to the algorithm performance. This decision can be made in an autonomous way, by the use of the Adaptive Strategy Selection paradigm, that continuously selects which strategy should be used for the next offspring generation, based on the performance achieved by each of the available ones on the current optimization process, i.e., while solving the problem. In this paper, we use the BBOB-2010 noiseless benchmarking suite to better empirically validate a comparison-based technique recently proposed to do so, the Fitness-based Area-Under-Curve Bandit [4], referred to as F-AUC-Bandit. It is compared with another recently proposed approach that uses Probability Matching technique based on the relative fitness improvements, referred to as PM-AdapSS-DE [7].
机译:对于特定问题,在差异演化算法中应该使用哪种可用策略的选择并非易事,除了取决于问题并且对算法性能非常敏感。可以使用“自适应策略选择”范式以自主方式做出此决定,该范式基于当前优化过程中每个可用策略所实现的性能,连续选择下一代后代应使用哪种策略。 ,即在解决问题的同时。在本文中,我们使用BBOB-2010无噪声基准套件来更好地凭经验验证最近提出的基于比较的技术,即基于Fitness的Area-Under-Curve Bandit [4],称为F-AUC-Bandit 。它与最近提出的另一种方法相比较,该方法基于相对适合度的改进而使用了概率匹配技术,称为PM-AdapSS-DE [7]。

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