Abstract

In the era of big data, vast urban mobility data introduce new opportunities to infer urban land use from the perspective of social function. Most existing works only derive land use information from a single type of urban mobility dataset, which is typically biased and results in difficulty obtaining a comprehensive view of urban land use. It remains challenging to fuse high-dimensional and noisy multi-source urban mobility data to infer urban land use. This study aimed to infer urban land use from multi-source urban mobility data using latent multi-view subspace clustering. The variation in the number of origin/destination points over time was initially used to characterize land use types. Then, a latent multi-view representation was applied to construct the common underlying structure shared by multi-source urban mobility data and effectively deal with noise. Finally, based on the latent multi-view representation, the subspace clustering method was used to infer the land use types. Experiments on taxi trajectory data and bus smart card data in Beijing reveal that, compared with the method using a single type of urban mobility dataset and the weighted fusion method, the approach presented in this study obtains the highest detection rate of land use. The urban land use inferred in this study provides calibration and reference for urban planning.

Highlights

  • Urban land use typically refers to syndromes of human activities that alter land surface processes in a city [1]

  • It is important to fuse multi-source urban mobility data to obtain a comprehensive view of urban land use

  • The land use information inferred from a single-source urban mobility dataset is usually biased

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Summary

Introduction

Urban land use typically refers to syndromes of human activities that alter land surface processes in a city [1]. In the era of big data, a wide spectrum of urban mobility datasets is currently available, including taxi GPS trajectories [9], smart card transactions [10], and mobile phone records [11]. These urban mobility datasets can reflect the temporal rhythms of human activities and can be used to uncover the social functions of urban land use types [12,13]. This could help urban planners make more informed and human-centric decisions in their planning [14]

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