Model-Based Higher-Order Mutation Analysis
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Green Open Access
Yes
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Abstract
Mutation analysis is widely used as an implementation-oriented method for software testing and test adequacy assessment. It is based on creating different versions of the software by seeding faults into its source code and constructing test cases to reveal these changes. However, in case that source code of software is not available, mutation analysis is not applicable. In such cases, the approach introduced in this paper suggests the alternative use of a model of the software under test. The objectives of this approach are (i) introduction of a new technique for first-order and higher-order mutation analysis using two basic mutation operators on graph-based models, (ii) comparison of the fault detection ability of first-order and higher-order mutants, and (iii) validity assessment of the coupling effect. © 2010 Springer-Verlag Berlin Heidelberg.
Description
International Conference on Advanced Software Engineering and Its Applications, ASEA 2010; Jeju Island; South Korea; 13 December 2010 through 15 December 2010
Keywords
Software testing, Basic mutation operators, Coupling effect, Event Sequence graphs, Coupling effect, Event Sequence graphs, Basic mutation operators, Software testing
Fields of Science
0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
Belli, F., Güler, N., Hollmann, A., Suna, G., and Yıldız, E. (2010). Model-based higher-order mutation analysis. Communications in Computer and Information Science, 117 CCIS, 164-173. doi:10.1007/978-3-642-17578-7_17
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OpenCitations Citation Count
8
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117 CCIS
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Start Page
164
End Page
173
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Scopus : 10
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8
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745
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353
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