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Title
Using Machine Learning to Build Test Oracles: an Industrial Case Study on Elevators Dispatching Algorithms
Author
Arrieta, Aitor
Ayerdi, Jon
Illarramendi, Miren
Sagardui, Goiuria
Author (from another institution)
Agirre, Aitor
Arratibel, Maite
Research Group
Ingeniería del software y sistemas
Other institutions
Ikerlan
Orona S.Coop.
Version
Postprint
Rights
© 2021 IEEE
Access
Open access
URI
https://hdl.handle.net/20.500.11984/5563
Publisher’s version
https://doi.org/10.1109/AST52587.2021.00012
Published at
IEEE/ACM International Conference on Automation of Software Test (AST)  2021, pp. 30-39
Publisher
IEEE
Keywords
Machine learning algorithms
software algorithms
Legislation
Machine learning ... [+]
Machine learning algorithms
software algorithms
Legislation
Machine learning
Maintenance engineering
Prediction algorithms
Software [-]
Abstract
The software of elevators requires maintenance over several years to deal with new functionality, correction of bugs or legislation changes. To automatically validate this software, test oracles are n ... [+]
The software of elevators requires maintenance over several years to deal with new functionality, correction of bugs or legislation changes. To automatically validate this software, test oracles are necessary. A typical approach in industry is to use regression oracles. These oracles have to execute the test input both, in the software version under test and in a previous software version. This practice has several issues when using simulation to test elevators dispatching algorithms at system level. These issues include a long test execution time and the impossibility of re-using test oracles both at different test levels and in operation. To deal with these issues, we propose DARIO, a test oracle that relies on regression learning algorithms to predict the Qualify of Service of the system. The regression learning algorithms of this oracle are trained by using data from previously tested versions. An empirical evaluation with an industrial case study demonstrates the feasibility of using our approach in practice. A total of five regression learning algorithms were validated, showing that the regression tree algorithm performed best. For the regression tree algorithm, the accuracy when predicting verdicts by DARIO ranged between 79 to 87%. [-]
xmlui.dri2xhtml.METS-1.0.item-sponsorship
Unión Europea
xmlui.dri2xhtml.METS-1.0.item-projectID
info:eu-repo/grantAgreement/EC/H2020/871319/EU/Design-Operation Continuum Methods for Testing and Deployment under Unforeseen Conditions for Cyber-Physical Systems of Systems/ADEPTNESS
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