Title of article :
Linking software testing results with a machine learning approach
Author/Authors :
Rafael Lenz، نويسنده , , Alexandre and Pozo، نويسنده , , Aurora and Regina Vergilio، نويسنده , , Silvia، نويسنده ,
Pages :
10
From page :
1631
To page :
1640
Abstract :
Software testing techniques and criteria are considered complementary since they can reveal different kinds of faults and test distinct aspects of the program. The functional criteria, such as Category Partition, are difficult to be automated and are usually manually applied. Structural and fault-based criteria generally provide measures to evaluate test sets. The existing supporting tools produce a lot of information including: input and produced output, structural coverage, mutation score, faults revealed, etc. However, such information is not linked to functional aspects of the software. In this work, we present an approach based on machine learning techniques to link test results from the application of different testing techniques. The approach groups test data into similar functional clusters. After this, according to the testerʹs goals, it generates classifiers (rules) that have different uses, including selection and prioritization of test cases. The paper also presents results from experimental evaluations and illustrates such uses.
Keywords :
Machine Learning , Software Testing , Test coverage criteria
Journal title :
Astroparticle Physics
Record number :
2047835
Link To Document :
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