Enhancing Path-Oriented Test Data Generation Using Adaptive Random Testing Techniques
November 29, 2017 Β· Declared Dead Β· π International Conference on Knowledge-Based Engineering and Innovation
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Authors
Esmaeel Nikravan, Farid Feyzi, Saeed Parsa
arXiv ID
1711.10850
Category
cs.SE: Software Engineering
Citations
11
Venue
International Conference on Knowledge-Based Engineering and Innovation
Last Checked
4 months ago
Abstract
In this paper, we have developed an approach to generate test data for path coverage based testing. The main challenge of this kind testing lies in its ability to build efficiently such a test suite in order to minimize the number of rejects. We address this problem with a novel divide-and-conquer approach based on adaptive random testing strategy. Our approach takes as input the constraints of an executable path and computes a tight over-approximation of their associated sub-domain by using a dynamic domain partitioning approach. We implemented this approach and got experimental results that show the practical benefits compared to existing approaches. Our method generates less invalid inputs and is capable of obtaining the sub-domain of many complex constraints.
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