Selection and Evaluation of Test Data Sets Based on Genetic Programming

M. C. F. P. Emer, S. Vergilio
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引用次数: 1

Abstract

A testing criterion is a predicate to be satisfied and generally addresses two important questions related to: 1) the selection of test cases capable of revealing as many faults as possible; and 2) the evaluation of a test set to consider the test ended. Studies show that fault based criteria, such as mutation testing, are very efficacious, but very expensive in terms of the number of test cases. Mutation testing uses mutation operators to generate alternatives for the program P under test. The goal is to derive test cases to producing different behaviours in P and its alternatives. This approach usually does not allow the test of interaction between faults since the alternative differs from P by a simple modification. This work explores the use of Genetic Programming (GP) to derive alternatives for testing P and describes two GP-based test procedures for selection and evaluation of test data. Experimental results show the GP approach applicability and allow comparison with mutation testing.
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基于遗传规划的测试数据集选择与评估
测试标准是要满足的谓词,通常解决两个重要的问题:1)选择能够揭示尽可能多的错误的测试用例;2)评估一个测试集,考虑测试结束。研究表明,基于故障的标准,如突变测试,是非常有效的,但在测试用例的数量方面非常昂贵。突变测试使用突变操作符为被测程序P生成替代方案。目标是导出测试用例,以在P及其替代品中产生不同的行为。这种方法通常不允许测试故障之间的相互作用,因为通过简单的修改,替代方案与P不同。这项工作探讨了遗传规划(GP)的使用,以获得测试P的替代方案,并描述了两个基于GP的测试程序,用于选择和评估测试数据。实验结果表明GP方法的适用性,并可与突变检测方法进行比较。
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