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Hauptverfasser: Liu, Junyuan, Wang, Xinglei, Zeng, Zichao, Feng, Jiazhuang, Qin, Quan, Ilyankou, Ilya, Dong, Guangsheng, Cheng, Tao
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.26036
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author Liu, Junyuan
Wang, Xinglei
Zeng, Zichao
Feng, Jiazhuang
Qin, Quan
Ilyankou, Ilya
Dong, Guangsheng
Cheng, Tao
author_facet Liu, Junyuan
Wang, Xinglei
Zeng, Zichao
Feng, Jiazhuang
Qin, Quan
Ilyankou, Ilya
Dong, Guangsheng
Cheng, Tao
contents Urban representation learning encodes complex urban environments into general-purpose embeddings for diverse downstream tasks and emerging urban foundation models. However, current evaluations are limited, typically focusing on one or two cities and tasks and relying on random splits that introduce spatial leakage, leading to inflated performance and weak support for cross-location generalization and fair comparison. To address this, we propose CityRep, a unified benchmark that evaluates urban representations across data modalities, cities, and tasks using spatially structured splits. CityRep consists of three key components: (1) a spatial unit-agnostic evaluation framework that supports heterogeneous urban representations through a standardized alignment module; (2) a unified evaluation protocol using block-based spatial splits to mitigate spatial leakage and enable rigorous model comparison; and (3) an extensible multi-city, multi-task benchmark suite spanning 8 cities and 8 tasks across regression, classification, and distribution prediction. We evaluate 11 representative urban representation models. Results show that performance is highly sensitive to the split protocol, with random splits inflating scores and altering model rankings. We also observe substantial variability across cities and tasks, underscoring the need for generalization-aware evaluation. CityRep is released as a reproducible benchmark with datasets, evaluation pipelines, and diagnostic tools to facilitate fair comparison and support future research in urban representation learning towards urban foundation models.
format Preprint
id arxiv_https___arxiv_org_abs_2605_26036
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CITYREP: A Unified Benchmark for Urban Representations Across Cities, Tasks, and Modalities
Liu, Junyuan
Wang, Xinglei
Zeng, Zichao
Feng, Jiazhuang
Qin, Quan
Ilyankou, Ilya
Dong, Guangsheng
Cheng, Tao
Artificial Intelligence
Machine Learning
Urban representation learning encodes complex urban environments into general-purpose embeddings for diverse downstream tasks and emerging urban foundation models. However, current evaluations are limited, typically focusing on one or two cities and tasks and relying on random splits that introduce spatial leakage, leading to inflated performance and weak support for cross-location generalization and fair comparison. To address this, we propose CityRep, a unified benchmark that evaluates urban representations across data modalities, cities, and tasks using spatially structured splits. CityRep consists of three key components: (1) a spatial unit-agnostic evaluation framework that supports heterogeneous urban representations through a standardized alignment module; (2) a unified evaluation protocol using block-based spatial splits to mitigate spatial leakage and enable rigorous model comparison; and (3) an extensible multi-city, multi-task benchmark suite spanning 8 cities and 8 tasks across regression, classification, and distribution prediction. We evaluate 11 representative urban representation models. Results show that performance is highly sensitive to the split protocol, with random splits inflating scores and altering model rankings. We also observe substantial variability across cities and tasks, underscoring the need for generalization-aware evaluation. CityRep is released as a reproducible benchmark with datasets, evaluation pipelines, and diagnostic tools to facilitate fair comparison and support future research in urban representation learning towards urban foundation models.
title CITYREP: A Unified Benchmark for Urban Representations Across Cities, Tasks, and Modalities
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2605.26036