MotifGPL: Motif-Enhanced Graph Prototype Learning for Deciphering Urban Social Segregation
Tengfei He, Xiao Zhou

TL;DR
MotifGPL is a novel framework that leverages motif-enhanced graph prototype learning to analyze complex urban social segregation by capturing key structural patterns and mobility behaviors.
Contribution
The paper introduces a new graph-based framework that combines prototype learning and motif discovery to better understand urban segregation structures.
Findings
MotifGPL effectively identifies key motifs influencing urban segregation.
The framework improves interpretability of urban spatial and mobility patterns.
Experimental results show robust guidance for urban segregation mitigation.
Abstract
Social segregation in cities, spanning racial, residential, and income dimensions, is becoming more diverse and severe. As urban spaces and social relations grow more complex, residents in metropolitan areas experience varying levels of social segregation. If left unaddressed, this could lead to increased crime rates, heightened social tensions, and other serious issues. Effectively quantifying and analyzing the structures within urban spaces and resident interactions is crucial for addressing segregation. Previous studies have mainly focused on surface-level indicators of urban segregation, lacking comprehensive analyses of urban structure and mobility. This limitation fails to capture the full complexity of segregation. To address this gap, we propose a framework named Motif-Enhanced Graph Prototype Learning (MotifGPL),which consists of three key modules: prototype-based graph…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Traffic Prediction and Management Techniques
