When users move in a physical space (e.g., an urban space), they would have some records called mobility records (e.g., trajectories) generated by devices such as mobile phones and GPS devices. Naturally, mobility records capture essential information of how users work, live and entertain in their daily lives, and therefore, they have been used in a wide range of tasks such as user profile inference, mobility prediction and traffic management. In this paper, we expand this line of research by investigating the problem of inferring user socioeconomic statuses (such as prices of users' living houses as a proxy of users' socioeconomic statuses) based on their mobility records, which can potentially be used in real-life applications such as the car loan business. For this task, we propose a socioeconomic-aware deep model called DeepSEI. The DeepSEI model incorporates two networks called deep network and recurrent network, which extract the features of the mobility records from three aspects, namely spatiality, temporality and activity, one at a coarse level and the other at a detailed level. We conduct extensive experiments on real mobility records data, POI data and house prices data. The results verify that the DeepSEI model achieves superior performance than existing studies. All datasets used in this paper will be made publicly available.
翻译:当用户在物理空间(如城市空间)移动时,他们将拥有一些由移动电话和全球定位系统设备等设备生成的称为流动记录的记录(如轨迹),自然,移动记录捕捉到用户在日常生活中如何工作、生活和娱乐的基本信息,因此,这些记录被用于一系列广泛的任务,如用户概况推断、流动预测和交通管理等。在本文件中,我们通过调查根据移动记录(如用户作为用户社会经济地位代理物的居住房屋价格)推断用户社会经济地位的问题来扩大这一研究范围,这些记录有可能用于汽车贷款业务等现实生活中的应用。关于这项任务,我们提议了一个社会经济认识的深层模型,称为DeepSEI。深层SEI模型包含两个称为深网络和经常网络的网络,从三个方面,即空间性、时间性和活动,一个在粗糙一级,另一个在详细一级,来推断用户生活状况(如用户生活住房价格作为用户社会经济地位的代理物)的问题。我们在实际移动记录数据、POI数据和房屋价格中进行广泛的实验,我们将在现有的纸面上进行高级业绩研究。