HABCSm:一种基于混合人工蜂群的t-way变强度测试集生成策略

A. K. Alazzawi, H. Rais, S. Basri, Y. A. Alsariera, Luiz Fernando Capretz, A. Balogun, A. A. Imam
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引用次数: 7

摘要

基于搜索的软件工程涉及在可应用的软件过程中部署元启发式,已经得到了广泛的关注。最近,研究人员一直在提倡采用元启发式算法进行t-way测试策略(其中t表示参数之间的相互作用强度)。虽然有帮助,但没有任何一种基于元启发式的t-way策略可以声称优于其同行。出于这个原因,元启发式算法的混合可以通过用其他算法的强度补偿一个算法的局限性来帮助确定每个算法的搜索能力。因此,本文结合人工蜂群(ABC)算法的优点和粒子群优化(PSO)算法的优点,提出了一种基于元启发式的混合人工蜂群(HABCSm)策略。HABCSm是第一个采用以汉明距离为核心方法生成最终测试集的混合人工蜂群(Hybrid Artificial Bee Colony, HABC)算法的t-way策略,也是第一个采用汉明距离作为最终选择标准来增强对新解的探索的t-way策略。实验结果表明,HABCSm具有较好的竞争性能。因此,这个发现通过最小化测试执行所需的测试用例的数量,对软件测试领域做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HABCSm: A Hamming Based t-way Strategy Based on Hybrid Artificial Bee Colony for Variable Strength Test Sets Generation
Search-based software engineering that involves the deployment of meta-heuristics in applicable software processes has been gaining wide attention. Recently, researchers have been advocating the adoption of meta-heuristic algorithms for t-way testing strategies (where t points the interaction strength among parameters). Although helpful, no single meta-heuristic based t-way strategy can claim dominance over its counterparts. For this reason, the hybridization of meta-heuristic algorithms can help to ascertain the search capabilities of each by compensating for the limitations of one algorithm with the strength of others. Consequently, a new meta-heuristic based t-way strategy called Hybrid Artificial Bee Colony (HABCSm) strategy, based on merging the advantages of the Artificial Bee Colony (ABC) algorithm with the advantages of a Particle Swarm Optimization (PSO) algorithm is proposed in this paper. HABCSm is the first t-way strategy to adopt Hybrid Artificial Bee Colony (HABC) algorithm with Hamming distance as its core method for generating a final test set and the first to adopt the Hamming distance as the final selection criterion for enhancing the exploration of new solutions. The experimental results demonstrate that HABCSm provides superior competitive performance over its counterparts. Therefore, this finding contributes to the field of software testing by minimizing the number of test cases required for test execution.
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