Abstract

InteNSE is an interdisciplinary workshop for research at the intersection of Machine Learning (ML) and Software Engineering (SE) and would be a pioneer in emphasizing the implicit properties of neural software engineering and analysis. Due to recent computational advancements, ML has become an inseparable part of the SE research community. ML can indeed improve and revolutionize many SE tasks. However, most research in the AI and SE communities consider ML as a closed box, i.e., only considering the final performance of the developed models as an evaluation metric. Ignoring the implicit properties of neural models, such as interpretability and robustness, one cannot validate the model's actual performance, generalizability, and whether it is learning what it is supposed to do. Specifically, in the domain of SE, where the result of ML4SE tools is code synthesis, bug finding, or repair, interpretability and robustness are crucial to ensure the reliability of the products.

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