Xiao Chen, Tao Pei, Ci Song, Hua Shu, Sihui Guo, Xi Wang, Yaxi Liu, Jie Chen
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引用次数: 0
摘要
了解个人的社会经济地位(SES)可以为制定政治和经济政策提供辅助信息。获取大规模经济调查数据费时费力。广泛使用的手机数据可以反映人的流动性和社会网络特征,已成为研究人员推断 SES 的低成本数据来源。然而,以往的研究往往将从手机数据中提取的人员流动特征和社会网络特征过度简化为一般的统计特征,从而忽略了一些重要的时间和关系信息。因此,我们提出了一个综合框架来预测个人的社会经济地位,有效地将人员流动性和社会关系相结合。在这个框架中,Word2Vec 模块从手机定位数据中提取人员流动特征,而图神经网络(GNN)模块 GraphSAGE 则从通话详情记录中捕捉社会网络特征。我们利用北京的真实数据对模型进行了训练,评估了我们提出的方法的有效性。实验结果表明,我们提出的混合方法明显优于其他方法,这表明在描述社会经济地位时,人员流动和社会联系是互补的。将人员流动和社会联系结合起来,可以进一步加深我们对城市经济地理的理解。
Coupling human mobility and social relationships to predict individual socioeconomic status: A graph neural network approach
Understanding individual's socioeconomic status (SES) can provide supporting information for designing political and economic policies. Acquiring large‐scale economic survey data is time‐consuming and laborious. The widespread mobile phone data, which can reflect human mobility and social network characteristics, has become a low‐cost data source for researchers to infer SES. However, previous studies often oversimplify human mobility features and social network features extracted from mobile phone data into general statistical features, resulting in discounting some important temporal and relational information. Therefore, we propose a comprehensive framework for individual SES prediction that effectively utilizes a combination of human mobility and social relationships. In this framework, Word2Vec module extracts human mobility features from mobile phone positioning data, and graph neural network (GNN) module GraphSAGE captures social network characteristics constructed from call detail records. We evaluated the effectiveness of our proposed approach by training the model with real‐world data in Beijing. According to the experimental results, our proposed hybrid approach outperformed the other methods evidently, demonstrating that human mobility and social links are complementary in the characterization of SES. Coupling human mobility and social links can further deepen our understanding of cities' economic geography.
期刊介绍:
Transactions in GIS is an international journal which provides a forum for high quality, original research articles, review articles, short notes and book reviews that focus on: - practical and theoretical issues influencing the development of GIS - the collection, analysis, modelling, interpretation and display of spatial data within GIS - the connections between GIS and related technologies - new GIS applications which help to solve problems affecting the natural or built environments, or business