The following publications are possibly variants of this publication:
- Simulating the urban spatial structure with spatial interaction: A case study of urban polycentricity under different scenariosCai Wu, Duncan A. Smith, Mingshu Wang. urban, 89:101677, 2021. [doi]
- Detecting feature from spatial point processes using Collective Nearest NeighborTao Pei, A-Xing Zhu, Chenghu Zhou, Baolin Li, Chengzhi Qin. urban, 33(6):435-447, 2009. [doi]
- Coupling graph deep learning and spatial-temporal influence of built environment for short-term bus travel demand predictionTianhong Zhao, Zhengdong Huang, Wei Tu, Biao He, Rui Cao, Jinzhou Cao, Mingxiao Li. urban, 94:101776, 2022. [doi]
- Applying machine learning to understand water security and water access inequality in underserved colonia communitiesZhining Gu, Wenwen Li, William Michael Hanemann, Yushiou Tsai, Amber Wutich, Paul Westerhoff, Laura Landes, Anais D. Roque, Madeleine Zheng, Carmen A. Velasco, Sarah Porter. urban, 102:101969, June 2023. [doi]
- How did micro-mobility change in response to COVID-19 pandemic? A case study based on spatial-temporal-semantic analyticsAoyong Li, Pengxiang Zhao, He Haitao, Ali Mansourian, Kay W. Axhausen. urban, 90:101703, 2021. [doi]
- Towards concentration and decentralization: The evolution of urban spatial structure of Chinese cities, 2001-2016Yingcheng Li. urban, 80:101425, 2020. [doi]