Medicine and Health
Evaluation of post-hoc interpretability methods in time-series classification
H. Turbé, M. Bjelogrlic, et al.
This research, conducted by Hugues Turbé, Mina Bjelogrlic, Christian Lovis, and Gianmarco Mengaldo, unveils a groundbreaking framework for evaluating post-hoc interpretability in time-series classification. With new metrics and a synthetic dataset, this study reveals crucial insights into interpretability methods, aiming to fortify trust in applications like healthcare.
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