Publication Date:
2022
abstract:
We propose a novel scalable approach for testing non-testable programs denoted as ARMED testing. The approach leverages efficient Association Rules Mining algorithms to determine relevant implication relations among features and actions observed while the system is in operation. These relations are used as the specification of positive and negative tests, allowing for identifying plausible or suspicious behaviors: for those cases when oracles are inherently unknownable, such as in social testing, ARMED testing introduces the novel concept of testing for plausibility. To illustrate the approach we walk-through an application example.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Testing; Non-testable systems; Association rules; Plausibility testing
List of contributors:
Bertolino, Antonia
Full Text:
Book title:
AST 2022 : 3rd ACM/IEEE International Conference on Automation of Software Test : Proceedings