Urban region profiling can benefit urban analytics. Although existing studies have made great efforts to learn urban region representation from multi-source urban data, there are still three limitations: (1) Most related methods focused merely on global-level inter-region relations while overlooking local-level geographical contextual signals and intra-region information; (2) Most previous works failed to develop an effective yet integrated fusion module which can deeply fuse multi-graph correlations; (3) State-of-the-art methods do not perform well in regions with high variance socioeconomic attributes. To address these challenges, we propose a multi-graph representative learning framework, called Region2Vec, for urban region profiling. Specifically, except that human mobility is encoded for inter-region relations, geographic neighborhood is introduced for capturing geographical contextual information while POI side information is adopted for representing intra-region information by knowledge graph. Then, graphs are used to capture accessibility, vicinity, and functionality correlations among regions. To consider the discriminative properties of multiple graphs, an encoder-decoder multi-graph fusion module is further proposed to jointly learn comprehensive representations. Experiments on real-world datasets show that Region2Vec can be employed in three applications and outperforms all state-of-the-art baselines. Particularly, Region2Vec has better performance than previous studies in regions with high variance socioeconomic attributes.
翻译:虽然现有研究已作出巨大努力,从多来源城市数据中学习城市区域代表性,但仍存在三个限制因素:(1) 多数相关方法仅侧重于全球层面区域间关系,而忽略了地方一级的地理背景信号和区域内信息;(2) 以往的工作大多未能开发一个有效但综合的融合模块,该模块能够深入融合多种地理关系;(3) 在社会经济特征差异很大的区域,国家-先进方法效果不佳;为应对这些挑战,我们提议了一个多图表代表性学习框架,称为区域2Vec,用于城市区域特征分析。具体而言,除了为区域间关系编码了人员流动之外,还采用了地理环境周边信息,同时采用了POI侧信息,以通过知识图表代表区域内信息;然后,用图表来捕捉各区域之间的无障碍、周边和功能关联;为考虑多种图表的歧视性特性,还提议了一个编码-脱coder多图表融合模块,以共同学习全面的图表。关于实际世界数据特征的实验,显示区域2 以往的基线应用比区域都好。