论估算多目标测试资源分配的可行解空间

IF 6.6 2区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING ACM Transactions on Software Engineering and Methodology Pub Date : 2024-03-26 DOI:10.1145/3654444
Guofu Zhang, Lei Li, Zhaopin Su, Feng Yue, Yang Chen, Miqing Li, Xin Yao
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引用次数: 0

摘要

多目标测试资源分配问题(MOTRAP)关注的是如何合理规划软件测试人员的测试时间,以尽可能地节约成本和提高可靠性。MOTRAP 的可行解空间由其变量(即在每个组件上投入的时间)和约束条件(如预先指定的可靠性、成本或时间)决定。尽管可以使用各种最先进的受限多目标优化器在这一空间中寻找单独的解决方案,但由于这一空间与庞大的搜索空间相比非常狭小,因此其搜索效率低下且成本高昂。决策者可能经常要经历漫长但不成功的搜索,无法找到可行的解决方案。在这项工作中,我们首先以基于架构的模型为基础,提出了一个重约束 MOTRAP,其中在预先指定的可靠性、成本和时间等多重约束条件下,对可靠性、成本和时间进行了优化。然后,为了估算这一特定 MOTRAP 的可行解空间,我们开发了理论和算法方法,从约束条件中推导出新的更严格的变量下限和上限。重要的是,我们的方法可以帮助决策者识别他们的约束条件设置是否可行,同时,推导出的约束条件正好可以包围微小的可行解空间,帮助现成的约束多目标优化器尽可能在可行解空间内进行搜索。此外,为了进一步充分利用这些边界,我们提出了一种广义的边界约束处理方法,约束多目标优化器可以利用这种方法,在理论上保证将不可行解拉回估计空间。最后,我们在应用和经验案例中对我们的方法进行了评估。实验结果表明,我们的方法大大提高了现成的约束多目标优化器和最先进的约束条件处理方法的效率、有效性和稳健性,为决策者找到了高质量的解决方案。这些改进可以帮助决策者减轻设置约束条件和选择约束多目标优化器的压力,更高效、更有效地促进测试规划。
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On Estimating the Feasible Solution Space of Multi-Objective Testing Resource Allocation

The multi-objective testing resource allocation problem (MOTRAP) is concerned on how to reasonably plan the testing time of software testers to save the cost and improve the reliability as much as possible. The feasible solution space of a MOTRAP is determined by its variables (i.e., the time invested in each component) and constraints (e.g., the pre-specified reliability, cost, or time). Although a variety of state-of-the-art constrained multi-objective optimisers can be used to find individual solutions in this space, their search remains inefficient and expensive due to the fact that this space is very tiny compare to the large search space. The decision maker may often suffer a prolonged but unsuccessful search that fails to return a feasible solution. In this work, we first formulate a heavily constrained MOTRAP on the basis of an architecture-based model, in which reliability, cost, and time are optimised under the pre-specified multiple constraints on reliability, cost, and time. Then, to estimate the feasible solution space of this specific MOTRAP, we develop theoretical and algorithmic approaches to deduce new tighter lower and upper bounds on variables from constraints. Importantly, our approach can help the decision maker identify whether their constraint settings are practicable, and meanwhile, the derived bounds can just enclose the tiny feasible solution space and help off-the-shelf constrained multi-objective optimisers make the search within the feasible solution space as much as possible. Additionally, to further make good use of these bounds, we propose a generalised bound constraint handling method that can be readily employed by constrained multi-objective optimisers to pull infeasible solutions back into the estimated space with theoretical guarantee. Finally, we evaluate our approach on application and empirical cases. Experimental results reveal that our approach significantly enhances the efficiency, effectiveness, and robustness of off-the-shelf constrained multi-objective optimisers and state-of-the-art bound constraint handling methods at finding high-quality solutions for the decision maker. These improvements may help the decision maker take the stress out of setting constraints and selecting constrained multi-objective optimisers and facilitate the testing planning more efficiently and effectively.

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来源期刊
ACM Transactions on Software Engineering and Methodology
ACM Transactions on Software Engineering and Methodology 工程技术-计算机:软件工程
CiteScore
6.30
自引率
4.50%
发文量
164
审稿时长
>12 weeks
期刊介绍: Designing and building a large, complex software system is a tremendous challenge. ACM Transactions on Software Engineering and Methodology (TOSEM) publishes papers on all aspects of that challenge: specification, design, development and maintenance. It covers tools and methodologies, languages, data structures, and algorithms. TOSEM also reports on successful efforts, noting practical lessons that can be scaled and transferred to other projects, and often looks at applications of innovative technologies. The tone is scholarly but readable; the content is worthy of study; the presentation is effective.
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