针对下一次发布问题的带有解决方案子集选择的分布算法估算

Pub Date : 2024-05-14 DOI:10.1093/jigpal/jzae052
Víctor Pérez-Piqueras, Pablo Bermejo López, José A Gámez
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引用次数: 0

摘要

下一版本问题(NRP)是一个组合优化问题,其目的是找到下一个软件版本中要交付的软件需求子集,最大限度地满足一系列客户的需求,并最大限度地减少开发人员实现这些需求所需的工作量。以往的研究应用了各种元启发式算法,主要是遗传算法。基于概率建模的分布估计算法(EDA)已被证明能在遗传算法难以解决的问题上取得良好效果。在本文中,我们建议调整三种 EDA,以快速有效的方式解决多目标 NRP 问题。结果表明,EDA 可用于解决 NRP 问题,而且解决方案的质量相当高。此外,我们还证明,使用每次迭代的解决方案子集选择方法,可以显著缩短它们的执行时间,同时保持所获得解决方案的整体质量。实验框架、代码和数据集已在代码库中公开。
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Estimation of distribution algorithms with solution subset selection for the next release problem
The Next Release Problem (NRP) is a combinatorial optimization problem that aims to find a subset of software requirements to be delivered in the next software release, which maximize the satisfaction of a list of clients and minimize the effort required by developers to implement them. Previous studies have applied various metaheuristics, mostly genetic algorithms. Estimation of Distribution Algorithms (EDA), based on probabilistic modelling, have been proved to obtain good results in problems where genetic algorithms struggle. In this paper we propose to adapt three EDAs to tackle the multi-objective NRP in a fast and effective way. Results show that EDAs can be applicable to solve the NRP with rather good quality of solutions. Furthermore, we prove that their execution time can be significantly reduced using a per-iteration solution subset selection method while maintaining the overall quality of the solutions obtained, and they perform the best when limiting the search time as in an interactive tool that requires fast responsiveness. The experimental framework, code and datasets have been made public in a code repository.
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