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Evaluation of post-hoc interpretability methods in time-series classification

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.... show more
Abstract
Post-hoc interpretability methods are critical tools to explain neural-network results. Several post-hoc methods have emerged in recent years but they produce different results when applied to a given task, raising the question of which method is the most suitable to provide accurate post-hoc interpretability. To understand the performance of each method, quantitative evaluation of interpretability methods is essential; however, currently available frameworks have several drawbacks that hinder the adoption of post-hoc interpretability methods, especially in high-risk sectors. In this work we propose a framework with quantitative metrics to assess the performance of existing post-hoc interpretability methods, particularly in time-series classification. We show that several drawbacks identified in the literature are addressed, namely, the dependence on human judgement, retraining and the shift in the data distribution when occluding samples. We also design a synthetic dataset with known discriminative features and tunable complexity. The proposed methodology and quantitative metrics can be used to understand the reliability of interpretability methods results obtained in practical applications. In turn, they can be embedded within operational workflows in critical fields that require accurate interpretability results for, example, regulatory policies.
Publisher
Nature Machine Intelligence
Published On
Mar 13, 2023
Authors
Hugues Turbé, Mina Bjelogrlic, Christian Lovis, Gianmarco Mengaldo
Tags
interpretability methods
time-series classification
AUCStop
FIS
Shapley
neural networks
healthcare
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