A Generalized Parallel Quantum Inspired Evolutionary Algorithm Framework for Hard Subset Selection Problems

Sulabh Bansal, C. Patvardhan
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Abstract

Quantum-inspired evolutionary algorithms (QIEAs) like all evolutionary algorithms (EAs) perform well on many problems but cannot perform equally better than random for all problems due to the No Free Lunch theorem. However, a framework providing near-optimal solutions on reasonably hard instances of a large variety of problems is feasible. It has an effective general strategy for easy incorporation of domain information along with effective control on the randomness in the search process to balance the exploration and exploitation. Moreover, its effective parallel implementation is desired in the current age. Such a Generalized Parallel QIEA framework designed for the solution of Subset Selection Problems is presented here. The computational performance results demonstrate its effectiveness in the solution of different large-sized hard SSPs like the Difficult Knapsack Problem, the Quadratic Knapsack Problem and the Multiple Knapsack problem. This is the first such a generalized framework and is a major step towards creating an adaptive search framework for combinatorial optimization problems.
硬子集选择问题的广义并行量子启发进化算法框架
量子启发的进化算法(QIEAs)像所有进化算法(ea)一样在许多问题上表现良好,但由于没有免费的午餐定理,它不能在所有问题上都表现得比随机算法好。然而,对于大量问题的相当困难的实例,提供接近最优解决方案的框架是可行的。它有一个有效的通用策略,可以方便地整合领域信息,并有效地控制搜索过程中的随机性,以平衡探索和利用。而且,它的有效并行实现是当前时代所需要的。本文提出了一种求解子集选择问题的广义并行QIEA框架。计算性能结果表明,该方法在求解复杂背包问题、二次背包问题和多重背包问题等大型硬背包问题上是有效的。这是第一个这样的广义框架,是为组合优化问题创建自适应搜索框架的重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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