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UrbanVerse: Learning Urban Region Representation Across Cities and Tasks

About

Recent advances in urban region representation learning have enabled a wide range of applications in urban analytics, yet existing methods remain limited in their capabilities to generalize across cities and analytic tasks. We aim to generalize urban representation learning beyond city- and task-specific settings, towards a foundation-style model for urban analytics. To this end, we propose UrbanVerse, a model for cross-city urban representation learning and cross-task urban analytics. For cross-city generalization, UrbanVerse focuses on features local to the target regions and structural features of the nearby regions rather than the entire city. We model regions as nodes on a graph, which enables a random walk-based procedure to form "sequences of regions" that reflect both local and neighborhood structural features for urban region representation learning. For cross-task generalization, we propose a cross-task learning module named HCondDiffCT. This module integrates region-conditioned prior knowledge and task-conditioned semantics into the diffusion process to jointly model multiple downstream urban prediction tasks. HCondDiffCT is generic. It can also be integrated with existing urban representation learning models to enhance their downstream task effectiveness. Experiments on real-world datasets show that UrbanVerse consistently outperforms state-of-the-art methods across six tasks under cross-city settings, achieving up to 35.89% improvements in prediction accuracy.

Fengze Sun, Egemen Tanin, Shanika Karunasekera, Zuqing Li, Flora D. Salim, Jianzhong Qi• 2026

Related benchmarks

TaskDatasetResultRank
Check-in PredictionNYC Target from CHI & SF
R^20.802
24
Carbon PredictionNYC Target from CHI & SF
R^20.531
16
Crime PredictionNYC Target from CHI & SF
R^20.769
16
Nightlight PredictionNYC Target from CHI & SF
R^20.891
16
Population PredictionNYC Target from CHI & SF
R^20.81
16
Service Call PredictionNYC Target from CHI & SF
R^20.713
16
Carbon PredictionSF Target from NYC & CHI
R^20.665
8
Carbon PredictionStaten Island (test)
R^20.781
8
Carbon PredictionNYC latest (Target)
MAE562
8
Carbon PredictionCHI Target latest
MAE258.6
8
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