AI RESEARCH

Exposing Vulnerabilities in Explanation for Time Series Classifiers via Dual-Target Attacks

arXiv CS.LG

ArXi:2602.02763v3 Announce Type: replace Interpretable time series deep learning systems are often assessed by checking temporal consistency on explanations, implicitly treating this as evidence of robustness. We show that this assumption can fail: Predictions and explanations can be adversarially decoupled, enabling targeted misclassification while the explanation remains plausible and consistent with a chosen reference rationale. We propose TSEF (Time Series Explanation Fooler), a dual-target attack that jointly manipulates the classifier and explainer outputs.