Towards quality assurance of software product lines with adversarial configurations

Biggio B.;Roli F.
2019-01-01

Abstract

Software product line (SPL) engineers put a lot of effort to ensure that, through the setting of a large number of possible configuration options, products are acceptable and well-tailored to customers' needs. Unfortunately, options and their mutual interactions create a huge configuration space which is intractable to exhaustively explore. Instead of testing all products, machine learning is increasingly employed to approximate the set of acceptable products out of a small training sample of configurations. Machine learning (ML) techniques can refine a software product line through learned constraints and a priori prevent non-acceptable products to be derived. In this paper, we use adversarial ML techniques to generate adversarial configurations fooling ML classifiers and pinpoint incorrect classifications of products (videos) derived from an industrial video generator. Our attacks yield (up to) a 100% misclassification rate and a drop in accuracy of 5%. We discuss the implications these results have on SPL quality assurance.
2019
Inglese
ACM International Conference Proceeding Series
9781450371384
Association for Computing Machinery
A
1
12
12
http://portal.acm.org/
23rd International Systems and Software Product Line Conference, SPLC 2019, co-located with the 13th European Conference on Software Architecture, ECSA 2019
Esperti anonimi
2019
fra
scientifica
Machine learning; Quality assurance; Software product line; Software testing; Software variability
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
Temple, P.; Acher, M.; Perrouin, G.; Biggio, B.; Jezequel, J. -M.; Roli, F.
273
6
4.1 Contributo in Atti di convegno
none
info:eu-repo/semantics/conferencePaper
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