Anomaly detection in Context-aware Feature Models
July 28, 2020 Β· Declared Dead Β· π International Workshop on Variability Modelling of Software-Intensive Systems
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Authors
Jacopo Mauro
arXiv ID
2007.14070
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.SE
Citations
5
Venue
International Workshop on Variability Modelling of Software-Intensive Systems
Last Checked
4 months ago
Abstract
Feature Models are a mechanism to organize the configuration space and facilitate the construction of software variants by describing configuration options using features, i.e., a name representing a functionality. The development of Feature Models is an error prone activity and detecting their anomalies is a challenging and important task needed to promote their usage. Recently, Feature Models have been extended with context to capture the correlation of configuration options with contextual influences and user customizations. Unfortunately, this extension makes the task of detecting anomalies harder. In this paper, we formalize the anomaly analysis in Context-aware Feature Models and we show how Quantified Boolean Formula (QBF) solvers can be used to detect anomalies without relying on iterative calls to a SAT solver. By extending the reconfigurator engine HyVarRec, we present findings evidencing that QBF solvers can outperform the common techniques for anomaly analysis.
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