Model Evaluation in Medical Datasets Over Time
Zhou, Helen, Chen, Yuwen, Lipton, Zachary C.
–arXiv.org Artificial Intelligence
Machine learning models deployed in healthcare systems face data drawn from continually evolving environments. However, researchers proposing such models typically evaluate them in a time-agnostic manner, with train and test splits sampling patients throughout the entire study period. We introduce the Evaluation on Medical Datasets Over Time (EMDOT) framework and Python package, which evaluates the performance of a model class over time. Across five medical datasets and a variety of models, we compare two training strategies: (1) using all historical data, and (2) using a window of the most recent data. We note changes in performance over time, and identify possible explanations for these shocks.
arXiv.org Artificial Intelligence
Nov-14-2022
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