基于模糊神经网络的回归测试用例优先级模型

Dr B Nithya, Dr. B. G. Prasanthi
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引用次数: 1

摘要

本文通过对测试用例进行优先级排序,在发生变更后对软件系统进行回归测试。测试专家在这里将这些集分类为乐观测试用例和悲观测试用例,作为格式化的数据,通过模糊规则进行预处理。乐观测试用例确保测试人员将它们考虑用于回归测试。他们被允许进入下一阶段来决定优先级。测试用例应该具有case_id、case_name、case_details、predicted_result、obtained_result、seconds_time和status的详细信息。部署的人工神经网络模型通过确保其对动态环境的能力,仅对乐观测试用例进行排名。通过使用平均百分比表示错误、语句和路径来评估所提出的人工神经网络模型的回归测试效率。与文献调查中采用的其他方法相比,结果具有95%以上的优势值。这种基于人工神经网络的模型的未来范围可用于使用强化学习方法对每个周期进行优先级,选择和分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy and ANN based model for Test case prioritization for Regression testing
This research article performs the prioritization of the test case to test the software system after the occurrence of changes for Regression testing. The test expert here will categorize the sets as Optimistic test cases and Pessimistic test cases as formatted data for preprocessing by the Fuzzy rules. The optimistic test cases ensure that they are considered for regression testing by the tester. They are allowed to go into the next phase for deciding the prioritization. The test case is expected to have the details of case_id, case_name, case_details, predicted_result, obtained_result, seconds_time, and status. The ANN model deployed, gives the ranking to only Optimistic test cases by ensuring its capability to a dynamic environment. The efficiency of the regression testing on the proposed ANN model is evaluated by representing the faults, statements, and paths using the average percentage. The results provide a superior value above 95% when compared to the other methods taken in literature survey. The future scope of this ANN-based model can be used for prioritizing, selecting, and categorizing every cycle using reinforcement learning methods.
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