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LSTM-based deep learning for spatial-temporal software testing

机译:基于LSTM的空间软件测试的深度学习

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摘要

Continuous integration (CI) software development practice has become more and more popular. Regression testing occurs very frequently in CI. Test case suites constantly change since new test cases are inserted and obsolete test case are removed in each cycle. The software developer hunts for quick-feedback of faults because of time constraint. An embedded software usually includes the spatial-temporal data in CI. The efficiency of regression testing for the embedded software is related to the space-time. To achieve ideal regression testing goals for the embedded software in CI, this paper proposes a novel test case prioritization approach using LSTM-Based (Long short-term memory) deep learning. LSTM is a time series prediction model. It can predict the probability of each test case detection fault in the next cycle according to the testing history information of all the previous CI cycles. The priority of test case can be obtained dynamically under the guidance of the probability. The experiments are conducted on two industrial data sets. The results verify that compared with some exiting test case prioritization approaches, our approach has better performance for embedded software as follows: (1) improve the prioritization effectiveness, (2) increase the fault detection rate in CI environment, and (3) decrease the testing execution time through automatic reduction the obsolete test cases.
机译:持续集成(CI)软件开发实践变得越来越受欢迎。回归测试在CI中经常发生。测试箱套件不断变化,因为插入新的测试用例并在每个周期中删除过时的测试用例。由于时间约束,软件开发人员为快速反馈而捕获故障。嵌入式软件通常包括CI中的空间数据。嵌入式软件的回归测试效率与时空相关。为实现CI中嵌入式软件的理想回归测试目标,本文提出了一种使用基于LSTM(长短短期内存)深度学习的新型测试用例优先级方法。 LSTM是一个时间序列预测模型。它可以根据所有先前CI周期的测试历史信息预测下一个周期中每个测试用例检测故障的概率。测试用例的优先级可以在概率的指导下动态获得。实验是在两个工业数据集上进行的。结果验证了与一些退出的测试案例的优先级方法相比,我们的方法具有更好的嵌入式软件性能,如下所示:(1)提高优先级效果,(2)增加CI环境中的故障​​检测率,(3)减少通过自动减少过时的测试用例测试执行时间。

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