Community Detection in Model-based Testing to Address Scalability: Study Design

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Abstract

Model-based GUI testing has achieved widespread recognition in academy thanks to its advantages compared to code-based testing due to its potentials to automate testing and the ability to cover bigger parts more efficiently. In this study design paper, we address the scalability part of the model-based GUI testing by using community detection algorithms. A case study is presented as an example of possible improvements to make a model-based testing approach more efficient. We demonstrate layered ESG models as an example of our approach to consider the scalability problem. We present rough calculations with expected results, which show 9 times smaller time and space units for 100 events in the ESG model when a community detection algorithm is applied.

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APA

Silistre, A., Kilincceker, O., Belli, F., Challenger, M., & Kardas, G. (2020). Community Detection in Model-based Testing to Address Scalability: Study Design. In Proceedings of the 2020 Federated Conference on Computer Science and Information Systems, FedCSIS 2020 (pp. 657–660). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.15439/2020F163

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