Publication | Closed Access
Estimating urban functional distributions with semantics preserved POI embedding
98
Citations
34
References
2022
Year
Geometric LearningProportional DistributionsEngineeringMachine LearningUrban Functional DistributionsMultilayer PerceptronUrban ScienceSpatiotemporal DatabaseSocial SciencesWord EmbeddingsNatural Language ProcessingData ScienceFunctional DistributionsFeature LearningGeographyUrban PlanningDeep LearningDistributional SemanticsUrban GeographySpatio-temporal ModelLinguistics
We present a novel approach for estimating the proportional distributions of function types (i.e. functional distributions) in an urban area through learning semantics preserved embeddings of points-of-interest (POIs). Specifically, we represent POIs as low-dimensional vectors to capture (1) the spatial co-occurrence patterns of POIs and (2) the semantics conveyed by the POI hierarchical categories (i.e. categorical semantics). The proposed approach utilizes spatially explicit random walks in a POI network to learn spatial co-occurrence patterns, and a manifold learning algorithm to capture categorical semantics. The learned POI vector embeddings are then aggregated to generate regional embeddings with long short-term memory (LSTM) and attention mechanisms, to take account of the different levels of importance among the POIs in a region. Finally, a multilayer perceptron (MLP) maps regional embeddings to functional distributions. A case study in Xiamen Island, China implements and evaluates the proposed approach. The results indicate that our approach outperforms several competitive baseline models in all evaluation measures, and yields a relatively high consistency between the estimation and ground truth. In addition, a comprehensive error analysis unveils several intrinsic limitations of POI data for this task, e.g. ambiguous linkage between POIs and functions.
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