AutoBlackTest: Automatic Black-Box Testing of Interactive Applications
Article in conference proceedings
Automatic test case generation is a key ingredient of an efficient and cost-effective software verification process. In this paper we focus on testing applications that interact with the users through a GUI, and present AutoBlackTest, a technique to automatically generate test cases at the system level. AutoBlackTest uses reinforcement learning, in particular Q-Learning, to learn how to interact with the application under test and stimulate its functionalities. The empirical results show that AutoBlackTest can execute a relevant portion of the code of the application under test, and can reveal previously unknown problems by working at the system level and interacting only through the GUI.
Software Testing, Verification and Validation (ICST), 2012 IEEE Fifth International Conference on
Start page number
End page number
Analytical models, AutoBlackTest, automatic black-box testing, automatic test case generation, Black-Box Testing, Concrete, Databases, Graphical user interfaces, GUI, interactive applications, interactive systems, learning (artificial intelligence), Observers, program testing, program verification, Prototypes, Q-Learning, Reinforcement learning, software verification, Test Automation, Testing, testing applications