Modeling shared micromobility as a label propagation process for detecting the overlapping communities
Peng Luo, Chengyu Song, Hao Li, Di Zhu, Fabio Duarte

TL;DR
This paper introduces a novel geospatial label propagation model to detect overlapping communities in shared micro-mobility networks, improving accuracy and efficiency over existing methods.
Contribution
The study develops the GIP model with SLPA algorithm, incorporating geographic distance decay and anomaly detection for better community detection in mobility data.
Findings
Outperforms existing models in efficiency and modularity
Effectively detects overlapping communities in e-scooter networks
Reflects meaningful spatial patterns in urban mobility
Abstract
Shared micro-mobility such as e-scooters has gained significant popularity in many cities. However, existing methods for detecting community structures in mobility networks often overlook potential overlaps between communities. In this study, we conceptualize shared micro-mobility in urban spaces as a process of information exchange, where locations are connected through e-scooters, facilitating the interaction and propagation of community affiliations. As a result, similar locations are assigned the same label. Based on this concept, we developed a Geospatial Interaction Propagation model (GIP) by designing a Speaker-Listener Label Propagation Algorithm (SLPA) that accounts for geographic distance decay, incorporating anomaly detection to ensure the derived community structures reflect meaningful spatial patterns. We applied this model to detect overlapping communities within the…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Transportation Planning and Optimization
