基于模糊自适应教学学习的成对测试优化策略

Fakhrud Din, K. Z. Zamli
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引用次数: 8

摘要

成对策略已经有效地测试了一系列软件和硬件系统。这些测试策略提供了可以替代详尽测试的解决方案。简单地说,两两测试策略根据两两交互(或组合)将系统的大输入参数值(或配置选项)显著地最小化为一个较小的集合。模糊自适应教学优化(ATLBO)算法是基于教学优化(TLBO)算法的改进形式。ATLBO采用Mamdani模糊推理系统根据性能自适应地选择教师阶段或学习者阶段,而不是像原始TLBO那样采用盲序应用。本文提出了基于ATLBO和TLBO的两种成对测试策略。实验结果表明,所提出的策略能够成为测试人员工具包的一部分,因为它们在许多成对基准测试中优于竞争的基于元启发式的成对测试策略和工具。此外,基于ATLBO的策略比基于TLBO的策略生成了最优的成对测试套件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy adaptive teaching learning-based optimization strategy for pairwise testing
Pairwise strategies have tested effectively a range of software and hardware systems. These testing strategies offer solutions that can substitute exhaustive testing. In simple terms, a pairwise testing strategy significantly minimizes large input parameter values (or configuration options) of a system into a smaller set based on pairwise interaction (or combination). Fuzzy Adaptive Teaching Learning-based Optimization (ATLBO) algorithm is an improved form of Teaching Learning-based Optimization (TLBO) algorithm. ATLBO employs Mamdani fuzzy inference system to select adaptively either teacher phase or learner phase based on performance instead of blind sequential application as in original TLBO. In this paper, two pairwise testing strategies based on ATLBO and TLBO are proposed. Experimental results suggest that the proposed strategies are capable to be part of testers' toolkit as they outperformed competing meta-heuristic based pairwise testing strategies and tools on many pairwise benchmarks. Moreover, ATLBO based strategy generated optimal pairwise test suites than the one based on TLBO.
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