System-Level Test Case Prioritization Using Machine Learning
Autor: | Ina Schaefer, Remo Lachmann, Christoph Seidl, Sandro Schulze, Manuel Nieke |
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Rok vydání: | 2016 |
Předmět: |
Source code
Computer science Test data generation media_common.quotation_subject White-box testing Manual testing 02 engineering and technology Machine learning computer.software_genre Test script Software Keyword-driven testing Regression testing 0202 electrical engineering electronic engineering information engineering Test suite Test Management Approach media_common business.industry 020207 software engineering Test case 020201 artificial intelligence & image processing Artificial intelligence Data mining business computer Software evolution |
Zdroj: | ICMLA |
Popis: | Regression testing is the common task of retesting software that has been changed or extended (e.g., by new features) during software evolution. As retesting the whole program is not feasible with reasonable time and cost, usually only a subset of all test cases is executed for regression testing, e.g., by executing test cases according to test case prioritization. Although a vast amount of methods for test case prioritization exist, they mostly require access to source code (i.e., white-box). However, in industrial practice, system-level testing is an important task that usually grants no access to source code (i.e., black-box). Hence, for an effective regression testing process, other information has to be employed. In this paper, we introduce a novel technique for test case prioritization for manual system-level regression testing based on supervised machine learning. Our approach considers black-box meta-data, such as test case history, as well as natural language test case descriptions for prioritization. We use the machine learning algorithm SVM Rank to evaluate our approach by means of two subject systems and measure the prioritization quality. Our results imply that our technique improves the failure detection rate significantly compared to a random order. In addition, we are able to outperform a test case order given by a test expert. Moreover, using natural language descriptions improves the failure finding rate. |
Databáze: | OpenAIRE |
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