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Compact Optimization Algorithms with Re-Sampled Inheritance

机译:具有重采样继承的紧凑型优化算法

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Compact optimization algorithms are a class of Estimation of Distribution Algorithms (EDAs) characterized by extremely limited memory requirements (hence they are called 'compact'). As all EDAs, compact algorithms build and update a probabilistic model of the distribution of solutions within the search space, as opposed to population-based algorithms that instead make use of an explicit population of solutions. In addition to that, to keep their memory consumption low, compact algorithms purposely employ simple probabilistic models that can be described with a small number of parameters. Despite their simplicity, compact algorithms have shown good performances on a broad range of benchmark functions and real-world problems. However, compact algorithms also come with some drawbacks, i.e. they tend to premature convergence and show poorer performance on non-separable problems. To overcome these limitations, here we investigate a possible algorithmic scheme obtained by combining compact algorithms with a non-disruptive restart mechanism taken from the literature, named Re-Sampled Inheritance (RI). The resulting compact algorithms with RI are tested on the CEC 2014 benchmark functions. The numerical results show on the one hand that the use of RI consistently enhances the performances of compact algorithms, still keeping a limited usage of memory. On the other hand, our experiments show that among the tested algorithms, the best performance is obtained by compact Differential Evolution with RI.
机译:紧凑型优化算法是一类分配算法的估计(EDA),其特征是内存需求极其有限(因此被称为“紧凑型”)。与所有EDA一样,紧凑型算法会建立和更新搜索空间内解决方案分布的概率模型,这与基于种群的算法相反,后者使用了明确的解决方案种群。除此之外,为了保持较低的内存消耗,紧凑型算法特意采用简单的概率模型,该模型可以用少量参数来描述。尽管简单,但紧凑型算法在各种基准功能和实际问题上均表现出良好的性能。但是,紧凑型算法也有一些缺点,即它们趋于过早收敛,并且在不可分离的问题上表现较差。为了克服这些局限性,在这里我们研究一种可能的算法方案,该方案是通过将紧凑型算法与取自文献的无中断重启机制(称为重采样继承(RI))相结合而获得的。带有RI的紧凑算法在CEC 2014基准测试功能上进行了测试。数值结果一方面表明,RI的使用不断提高了紧凑算法的性能,但仍然限制了内存的使用。另一方面,我们的实验表明,在经过测试的算法中,具有RI的紧凑型差分进化获得了最佳性能。

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