2022
DOI: 10.1155/2022/5263376
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Exploring the Spatial Impact of Multisource Data on Urban Vitality: A Causal Machine Learning Method

Abstract: Identifying urban vitality is the key to optimizing the urban structure. Previous studies on urban multisource data and urban vitality often assume that they follow a predefined (linear or nonlinear in terms of parameters) relationship, and few studies have explored the causality of urban multisource data on urban vitality. The existing machine learning methods often pay attention to the correlation in the data and ignore the causality. With the continuous emergence of new needs, its disadvantages gradually be… Show more

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