AI RESEARCH

C-SHAP for time series: An approach to high-level temporal explanations

arXiv CS.AI

ArXi:2504.11159v2 Announce Type: replace In high-stakes domains, such as healthcare and industry, the explainability of AI-based decision-making has become crucial. Without insight into model reasoning, the reliability of these models cannot be ensured. Applications often rely on the time series data type which, unlike the image data type, is underexplored with respect to the development of explainable AI (XAI) techniques. Most existing XAI techniques for time series are focused on point- or subsequence-based explanations.