基于改进度量记忆树和信息熵的自适应随机测试

Jinfu Chen, Haibo Chen, Yiming Wu, Chengying Mao, Saihua Cai
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引用次数: 0

摘要

自适应随机测试(ART)是在随机测试(RT)基础上提出的一系列测试技术。ART通过在整个输入域中更均匀地分布测试用例,实现了比RT更好的故障检测。然而,选择测试用例的过程会导致大量的计算成本,并且维度的增加会导致有效性的降低。本文提出了一种改进的度量记忆树和距离信息熵选择策略,即基于改进MM-tree和信息熵的FSCS (MMIE-FSCS),以提高固定大小候选集ART (FSCS-ART)的效率和有效性。通过仿真和实证研究来检验该方法的效率和有效性。实验结果表明,该方法降低了FSCS-ART的计算成本,提高了故障检测效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Random Testing based on the Modified Metric-memory Tree and Information Entropy
Adaptive Random Testing (ART) is a series of testing techniques proposed as an enhancement to random testing (RT). ART achieves better failure-detection than RT by distributing test cases more evenly throughout the input domain. However, the process of selecting test cases leads to significant computational costs and the increase of dimension leads to the decrease of effectiveness. In this paper, we propose a new ART approach to improve the efficiency and effectiveness of Fixed-size-Candidate-set ART (FSCS-ART) by applying a modified Metric-Memory tree and distance information entropy selection strategy, namely FSCS based on the modified MM-tree and information entropy (MMIE-FSCS). Simulations and empirical studies are conducted to examine the efficiency and effectiveness of the approach. The experimental results show that the approach reduces the computational cost of FSCS-ART and improves failure-detection effectiveness.
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