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Dynamic Behavior Analysis of Membrane-Inspired Evolutionary Algorithms

机译:膜启发式进化算法的动态行为分析

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A membrane-inspired evolutionary algorithm (MIEA) is a successful instance of a model linking membrane computing and evolutionary algorithms. This paper proposes the analysis of dynamic behaviors of MIEAs by introducing a set of population diversity and convergence measures. This is the first attempt to obtain additional insights into the search capabilities of MIEAs. The analysis is performed on the MIEA, QEPS (a quantum-inspired evolutionary algorithm based on membrane computing), and its counterpart algorithm, QIEA (a quantum-inspired evolutionary algorithm), using a comparative approach in an experimental context to better understand their characteristics and performances. Also the relationship between these measures and fitness is analyzed by presenting a tendency correlation coefficient to evaluate the importance of various population and convergence measures, which is beneficial to further improvements of MIEAs. Results show that QEPS can achieve better balance between convergence and diversity than QIEA, which indicates QEPS has a stronger capacity of balancing exploration and exploitation than QIEA in order to prevent premature convergence that might occur. Experiments utilizing knapsack problems support the above made statement.
机译:膜启发式进化算法(MIEA)是将膜计算与进化算法联系起来的模型的成功实例。本文通过引入一组人口多样性和收敛性措施,提出了对MIEAs动态行为的分析。这是首次尝试获得有关MIEA搜索功能的更多见解。在实验环境中使用比较方法,对MIEA QEPS(基于膜计算的量子启发式进化算法)及其对应算法QIEA(量子启发式进化算法)进行了分析,以更好地了解其特征和表演。此外,通过提出趋势相关系数以评估各种人口和收敛性指标的重要性,分析了这些指标与适应性之间的关系,这有利于MIEA的进一步改进。结果表明,QEPS可以比QIEA更好地实现收敛和多样性之间的平衡,这表明QEPS具有比QIEA更好的平衡勘探与开发的能力,以防止可能发生的过早收敛。利用背包问题的实验支持上述陈述。

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