Title :
Learning Parameterized State Machine Model for Integration Testing
Author :
Shahbaz, Muzammil ; Li, Keqin ; Groz, Roland
Author_Institution :
France Telecom, Meylan
Abstract :
Although many of the software engineering activities can now be model-supported, the model is often missing in software development. We are interested in retrieving state- machine models from black-box software components. We assume that the details of the development process of such components (third-party software or COTS) are not available. To adequately support software engineering activities, we need to learn more complex models than simple automata. Our model is an extension of finite state machines that incorporates the notions of predicates and parameters on transitions. We argue that such a model can offer a suitable trade-off between expressivity of the model and complexity of model learning. We have been able to extend polynomial learning algorithms to extract such models in an incremental testing approach. In turn, the models can be used to derive tests or for component documentation.
Keywords :
finite state machines; learning (artificial intelligence); polynomials; software engineering; black-box software components; finite state machines; integration testing; parameterized state machine model; polynomial learning algorithms; software development; software engineering; Computer science; Documentation; Inference algorithms; Iterative algorithms; Learning automata; Machine learning; Polynomials; Software engineering; Software testing; System testing;
Conference_Titel :
Computer Software and Applications Conference, 2007. COMPSAC 2007. 31st Annual International
Conference_Location :
Beijing
Print_ISBN :
0-7695-2870-8
DOI :
10.1109/COMPSAC.2007.134