Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

M-CELS: Counterfactual Explanation for Multivariate Time Series Data Guided by Learned Saliency Maps

About

Over the past decade, multivariate time series classification has received great attention. Machine learning (ML) models for multivariate time series classification have made significant strides and achieved impressive success in a wide range of applications and tasks. The challenge of many state-of-the-art ML models is a lack of transparency and interpretability. In this work, we introduce M-CELS, a counterfactual explanation model designed to enhance interpretability in multidimensional time series classification tasks. Our experimental validation involves comparing M-CELS with leading state-of-the-art baselines, utilizing seven real-world time-series datasets from the UEA repository. The results demonstrate the superior performance of M-CELS in terms of validity, proximity, and sparsity, reinforcing its effectiveness in providing transparent insights into the decisions of machine learning models applied to multivariate time series data.

Peiyu Li, Omar Bahri, Soukaina Filali Boubrahimi, Shah Muhammad Hamdi• 2024

Related benchmarks

TaskDatasetResultRank
Time Series Counterfactual ExplanationsTwoLeadECG
Validation Score0.97
3
Time Series Counterfactual ExplanationsGunPoint
Validity Score0.425
3
Time Series Counterfactual ExplanationsEarthquakes
Validation Metric Value0.174
3
Time Series Counterfactual ExplanationsCoffee
Validation Score1
3
Time Series Counterfactual ExplanationsItalyPowerDemand
Value0.466
3
Time Series Counterfactual ExplanationsCBF
Validation Score0.226
3
Time Series Counterfactual ExplanationsCricket
Validation Score0.194
2
Time Series Counterfactual ExplanationsEpilepsy
Value Score0.272
2
Showing 8 of 8 rows

Other info

Follow for update