Neural Networks as Artificial Specifications

Publication date

2018-09-07

Authors

Prasetya, I. S.W.B.ISNI 0000000396460003
Tran, M. A.

Editors

Medina-Bulo, Immaculada
Merayo, Mercedes G.
Hierons, Robert

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

In theory, a neural network can be trained to act as an artificial specification for a program by showing it samples of the programs executions. In practice, the training turns out to be very hard. Programs often operate on discrete domains for which patterns are difficult to discern. Earlier experiments reported too much false positives. This paper revisits an experiment by Vanmali et al. by investigating several aspects that were uninvestigated in the original work: the impact of using different learning modes, aggressiveness levels, and abstraction functions. The results are quite promising.

Keywords

Neural network for software testing, Automated oracles, Taverne

Citation

Prasetya, I S W B & Tran, M A 2018, Neural Networks as Artificial Specifications. in I Medina-Bulo, M G Merayo & R Hierons (eds), Testing Software and Systems : 30th IFIP WG 6.1 International Conference, ICTSS 2018, Cádiz, Spain, October 1-3, 2018, Proceedings. 1 edn, Lecture notes in computer science, vol. 11146, Springer, Cham, pp. 135-141. https://doi.org/10.1007/978-3-319-99927-2_11