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Using hybrid algorithm for Pareto efficient multi-objective test suite minimisation

机译:使用混合算法实现帕累托高效的多目标测试套件最小化

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摘要

Test suite minimisation techniques seek to reduce the effort required for regression testing by selecting a subset of test suites. In previous work, the problem has been considered as a single-objective optimisation problem. However, real world regression testing can be a complex process in which multiple testing criteria and constraints are involved. This paper presents the concept of Pareto efficiency for the test suite minimisation problem. The Pareto-efficient approach is inherently capable of dealing with multiple objectives, providing the decision maker with a group of solutions that are not dominated by each other. The paper illustrates the benefits of Pareto efficient multi-objective test suite minimisation with empirical studies of two and three objective formulations, in which multiple objectives such as coverage and past fault-detection history are considered. The paper utilises a hybrid, multi-objective genetic algorithm that combines the efficient approximation of the greedy approach with the capability of population based genetic algorithm to produce higher-quality Pareto fronts.
机译:测试套件最小化技术旨在通过选择测试套件的子集来减少回归测试所需的工作量。在以前的工作中,该问题已被视为单目标优化问题。但是,现实世界中的回归测试可能是一个复杂的过程,其中涉及多个测试标准和约束。本文提出了帕累托效率概念,用于测试套件最小化问题。帕累托高效的方法具有内在的能力,能够处理多个目标,从而为决策者提供了一组彼此之间不占主导地位的解决方案。本文通过对两个和三个目标公式的实证研究,说明了帕累托高效的多目标测试套件最小化的好处,其中考虑了多个目标,例如覆盖范围和过去的故障检测历史。本文利用混合,多目标遗传算法,将贪婪方法的有效逼近与基于种群的遗传算法的能力相结合,以产生更高质量的帕累托前沿。

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