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Towards Explainable Anomaly Detection in Shared Mobility Systems

Towards Explainable Anomaly Detection in Shared Mobility Systems

来源:Arxiv_logoArxiv
英文摘要

Shared mobility systems, such as bike-sharing networks, play a crucial role in urban transportation. Identifying anomalies in these systems is essential for optimizing operations, improving service reliability, and enhancing user experience. This paper presents an interpretable anomaly detection framework that integrates multi-source data, including bike-sharing trip records, weather conditions, and public transit availability. The Isolation Forest algorithm is employed for unsupervised anomaly detection, along with the Depth-based Isolation Forest Feature Importance (DIFFI) algorithm providing interpretability. Results show that station-level analysis offers a robust understanding of anomalies, highlighting the influence of external factors such as adverse weather and limited transit availability. Our findings contribute to improving decision-making in shared mobility operations.

Elnur Isgandarov、Matteo Cederle、Federico Chiariotti、Gian Antonio Susto

综合运输

Elnur Isgandarov,Matteo Cederle,Federico Chiariotti,Gian Antonio Susto.Towards Explainable Anomaly Detection in Shared Mobility Systems[EB/OL].(2025-07-21)[2025-08-10].https://arxiv.org/abs/2507.15643.点此复制

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