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On the Cost-Effectiveness of Composite Metamorphic Relations for Testing Deep Learning Systems.pdf (619.7Kb)
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Title
On the Cost-Effectiveness of Composite Metamorphic Relations for Testing Deep Learning Systems
Author
Arrieta, AitorMondragon Unibertsitatea
Research Group
Ingeniería del software y sistemas
Published Date
2022
Publisher
IEEE
Keywords
Deep learning
Learning systems
Costs
Automation ... [+]
Deep learning
Learning systems
Costs
Automation
Conferences
Autonomous vehicles
testing [-]
Abstract
Deep Learning (DL) components are increasing their presence in mission and safety-critical systems, such as autonomous vehicles. The verification process of such systems needs to be rigorous, for whic ... [+]
Deep Learning (DL) components are increasing their presence in mission and safety-critical systems, such as autonomous vehicles. The verification process of such systems needs to be rigorous, for which automated solutions are paramount. To allow test automation, test oracles are necessary. In the context of DL systems, meta-morphic test oracles have found to be effective. However, such oracles require the execution of multiple tests, which makes testing more expensive. Metamorphic relation composition can reduce the cost of metamorphic testing. However, its effectiveness has found mixed answers. This paper reports the preliminary results of our study on measuring the cost-effectiveness of composite metamor-phic relations for testing DL systems. To this end, we empirically evaluate the cost-effectiveness of composite metamorphic relations within a DL model for object classification. Our results suggest that composite metamorphic relations reduce the failure revealing capability when compared to their component metamorphic relations. [-]
URI
https://hdl.handle.net/20.500.11984/5906
Publisher’s version
https://doi.org/10.1145/3524846.3527335
ISBN
978-1-4503-9307-2
Published at
2022 IEEE/ACM 7th International Workshop on Metamorphic Testing (MET)  09 May. Pp. 42-47. IEEE, 2022
Document type
Conference paper
Version
Postprint – Accepted Manuscript
Rights
© 2022 ACM
Access
Embargoed Access (until 2024-07-31)
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  • Conferences - Engineering [234]

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