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引用次数: 0
摘要
确定区域的功能和特定兴趣点(POI)的需求对于有效的城市规划至关重要。然而,由于城市区域的多样性和模糊性,城市兴趣点需求分析仍有一些重大挑战有待解决。为此,我们提出了一个新颖的框架,通过图表示学习(即变异多图自动编码融合)来增强兴趣区域需求建模,旨在从 POI 层面和类别层面有效预测 ROI 需求。具体来说,我们首先将城市区域划分为空间上不同的邻近区域,提取相应的多维性质,然后生成空间属性区域图(SARG)。然后,我们引入基于无监督多图的变异自动编码器,将 SARG 的区域轮廓映射到潜空间,并通过概率采样和全局融合进一步检索动态潜表征。此外,在训练过程中,还采用了时空约束贝叶斯算法来推断目的地 POI。最后,我们在真实世界的数据集上进行了大量实验,结果表明我们的模型明显优于最先进的基线模型。
Towards effective urban region-of-interest demand modeling via graph representation learning
Identifying the region’s functionalities and what the specific Point-of-Interest (POI) needs is essential for effective urban planning. However, due to the diversified and ambiguity nature of urban regions, there are still some significant challenges to be resolved in urban POI demand analysis. To this end, we propose a novel framework, in which Region-of-Interest Demand Modeling is enhanced through the graph representation learning, namely Variational Multi-graph Auto-encoding Fusion, aiming to effectively predict the ROI demand from both the POI level and category level. Specifically, we first divide the urban area into spatially differentiated neighborhood regions, extract the corresponding multi-dimensional natures, and then generate the Spatial-Attributed Region Graph (SARG). After that, we introduce an unsupervised multi-graph based variational auto-encoder to map regional profiles of SARG into latent space, and further retrieve the dynamic latent representations through probabilistic sampling and global fusing. Additionally, during the training process, a spatio-temporal constrained Bayesian algorithm is adopted to infer the destination POIs. Finally, extensive experiments are conducted on real-world dataset, which demonstrate our model significantly outperforms state-of-the-art baselines.
期刊介绍:
Advances in data gathering, storage, and distribution have created a need for computational tools and techniques to aid in data analysis. Data Mining and Knowledge Discovery in Databases (KDD) is a rapidly growing area of research and application that builds on techniques and theories from many fields, including statistics, databases, pattern recognition and learning, data visualization, uncertainty modelling, data warehousing and OLAP, optimization, and high performance computing.