Towards eXplainable AI for Mobility Data Science


Anahid Jalali, Anita Graser, Clemens Heistracher


This paper presents our ongoing work towards XAI for Mobility Data Science applications, focusing on explainable models that can learn from dense trajectory data, such as GPS tracks of vehicles and vessels using temporal graph neural networks (GNNs) and counterfactuals. We review the existing GeoXAI studies, argue the need for comprehensible explanations with human-centered approaches, and outline a research path toward XAI for Mobility Data Science.

Scientific Publications
Arxiv - Cornell University