Data Leakage in Notebooks: Static Detection and Better Processes

September 07, 2022 Β· Declared Dead Β· πŸ› International Conference on Automated Software Engineering

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Authors Chenyang Yang, Rachel A Brower-Sinning, Grace A. Lewis, Christian KΓ€stner arXiv ID 2209.03345 Category cs.SE: Software Engineering Citations 26 Venue International Conference on Automated Software Engineering Last Checked 4 months ago
Abstract
Data science pipelines to train and evaluate models with machine learning may contain bugs just like any other code. Leakage between training and test data can lead to overestimating the model's accuracy during offline evaluations, possibly leading to deployment of low-quality models in production. Such leakage can happen easily by mistake or by following poor practices, but may be tedious and challenging to detect manually. We develop a static analysis approach to detect common forms of data leakage in data science code. Our evaluation shows that our analysis accurately detects data leakage and that such leakage is pervasive among over 100,000 analyzed public notebooks. We discuss how our static analysis approach can help both practitioners and educators, and how leakage prevention can be designed into the development process.
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