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Static Segregative Genetic Algorithm for Optimizing Variable Ordering of ROBDDs

机译:优化ROBDD变量排序的静态分离遗传算法。

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This paper presents a segregative genetic algorithm for optimizing the variable order in Reduced Ordered Binary Decision Diagrams. The main components are a basic genetic algorithm and two feature functions used to measure the similarity between chromosomes. Many copies of the basic genetic algorithm explore in parallel subpopulations induced in the search space by clustering in the feature space. A communication protocol preserves the similarity within each subpopulation during the evolution process. An associative tabu search memory is used to avoid reexploration of the search space. Extensive experimental evaluation proves the efficiency and stability of the segregative approach, which systematically produces better results than the basic genetic algorithm. The efficiency of the distributed implementation in terms of resource usage and many aspects regarding the communication protocol between different components are thoroughly described. The experiments used classical benchmarks known as very difficult and show that the segregative variant is better than the monopopulation algorithm and the approach using the island model.
机译:本文提出了一种分离遗传算法,用于优化降阶二元决策图中的变量顺序。主要组成部分是基本的遗传算法和两个用于测量染色体之间相似度的特征函数。基本遗传算法的许多副本都通过在特征空间中聚类来探索在搜索空间中诱导的平行亚群。通信协议在进化过程中保留了每个亚群内的相似性。关联禁忌搜索存储器用于避免重新搜索搜索空间。广泛的实验评估证明了分离方法的有效性和稳定性,该方法比基本遗传算法系统地产生了更好的结果。全面描述了分布式实现在资源使用方面的效率以及有关不同组件之间通信协议的许多方面。实验使用的经典基准测试非常困难,并且表明隔离变体优于单种群算法和使用岛模型的方法。

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