Using Semi-Supervised Learning for Predicting Metamorphic Relations
February 20, 2018 Β· Declared Dead Β· π International Workshop on Metamorphic Testing
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Authors
Bonnie Hardin, Upulee Kanewala
arXiv ID
1802.07324
Category
cs.SE: Software Engineering
Citations
27
Venue
International Workshop on Metamorphic Testing
Last Checked
4 months ago
Abstract
Software testing is difficult to automate, especially in programs which have no oracle, or method of determining which output is correct. Metamorphic testing is a solution this problem. Metamorphic testing uses metamorphic relations to define test cases and expected outputs. A large amount of time is needed for a domain expert to determine which metamorphic relations can be used to test a given program. Metamorphic relation prediction removes this need for such an expert. We propose a method using semi-supervised machine learning to detect which metamorphic relations are applicable to a given code base. We compare this semi-supervised model with a supervised model, and show that the addition of unlabeled data improves the classification accuracy of the MR prediction model.
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