Machine learning (ML) techniques increase the effectiveness of software engineering (SE) lifecycle activities. We systematically collected, quality-assessed, summarized, and categorized 83 reviews in ML for SE published between 2009-2022, covering 6,117 primary studies. The SE areas most tackled with ML are software quality and testing, while human-centered areas appear more challenging for ML. We propose a number of ML for SE research challenges and actions including: conducting further empirical validation and industrial studies on ML; reconsidering deficient SE methods; documenting and automating data collection and pipeline processes; reexamining how industrial practitioners distribute their proprietary data; and implementing incremental ML approaches.
@article{arxiv.2211.09425,
title = {Machine Learning for Software Engineering: A Tertiary Study},
author = {Zoe Kotti and Rafaila Galanopoulou and Diomidis Spinellis},
journal= {arXiv preprint arXiv:2211.09425},
year = {2023}
}