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Extremal optimization: methods derived from Co-Evolution

机译:极值优化:从协同进化中得出的方法

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摘要

We describe a general-purpose method for finding high-quality solutions to hard optimization problems, inspired by self-organized critical models of co-evolution such as the Bak-Sneppen model. The method, called Extremal Optimization, successively eliminates extremely undesirable components of sub-optimal solutions, rather than "breeding" better components. In contrast to Genetic Algorithms which operate on an entire "gene-pool" of possible solutions, Extremal Optimization improves on a single candidate solution by treating each of its components as species co-evolving according to Darwinian principles. Unlike Simulated Annealing, its non-equilibrium approach effects an algorithm requiring few parameters to tune. With only one adjustable parameter, its performance proves competitive with, and often superior to, more elaborate stochastic optimization procedures. We demonstrate it here on two classic hard optimization problems: graph partitioning and the traveling salesman problem.
机译:我们描述了一种通用的方法,该方法可用于寻求硬优化问题的高质量解决方案,其灵感来自于自组织的协同进化关键模型(例如Bak-Sneppen模型)。这种称为“极值优化”的方法可以连续消除次优解决方案中极不希望的组件,而不是“繁殖”更好的组件。与在可能的解决方案的整个“基因池”上运行的遗传算法相反,极端优化通过将其每个组件视为根据达尔文原理共同进化的物种,从而在单个候选解决方案上有所改进。与模拟退火不同,其非平衡方法会影响需要很少参数进行调整的算法。仅使用一个可调参数,它的性能就证明与更复杂的随机优化程序相比具有竞争优势,并且通常优于后者。我们在这里针对两个经典的硬优化问题进行演示:图形划分和旅行商问题。

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