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XTSC-Bench: Quantitative Benchmarking for Explainers on Time Series Classification

Machine Learning 2023-10-24 v1

Abstract

Despite the growing body of work on explainable machine learning in time series classification (TSC), it remains unclear how to evaluate different explainability methods. Resorting to qualitative assessment and user studies to evaluate explainers for TSC is difficult since humans have difficulties understanding the underlying information contained in time series data. Therefore, a systematic review and quantitative comparison of explanation methods to confirm their correctness becomes crucial. While steps to standardized evaluations were taken for tabular, image, and textual data, benchmarking explainability methods on time series is challenging due to a) traditional metrics not being directly applicable, b) implementation and adaption of traditional metrics for time series in the literature vary, and c) varying baseline implementations. This paper proposes XTSC-Bench, a benchmarking tool providing standardized datasets, models, and metrics for evaluating explanation methods on TSC. We analyze 3 perturbation-, 6 gradient- and 2 example-based explanation methods to TSC showing that improvements in the explainers' robustness and reliability are necessary, especially for multivariate data.

Keywords

Cite

@article{arxiv.2310.14957,
  title  = {XTSC-Bench: Quantitative Benchmarking for Explainers on Time Series Classification},
  author = {Jacqueline Höllig and Steffen Thoma and Florian Grimm},
  journal= {arXiv preprint arXiv:2310.14957},
  year   = {2023}
}

Comments

Accepted at ICMLA 2023

R2 v1 2026-06-28T12:58:59.766Z