Evaluating the benefits of empowering model-driven development with a machine learning classifier

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Abstract

Increasingly, the model driven engineering (MDE) community is paying more attention to the techniques offered by the machine learning (ML) community. This has led to the application of ML techniques to MDE related tasks in hope of increasing the current benefits of MDE. Nevertheless, there is a lack of empirical experiments that evaluate the benefits that ML brings to MDE. In this work, we evaluate the benefits of empowering model engineers of model-driven development (MDD) with an ML classifier. To do this, we tackled how to embed the ML classifier as part of the MDD. Then, this was evaluated using two different real industrial cases. Our results show that despite the ML part takes an extra effort, the use of the ML classifier pays off in terms of the quality results, the perceived usefulness, and intention to use.

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Marcén, A. C., Pérez, F., Pastor, Ó., & Cetina, C. (2022). Evaluating the benefits of empowering model-driven development with a machine learning classifier. Software - Practice and Experience, 52(11), 2439–2455. https://doi.org/10.1002/spe.3133

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