The location-based social network, Foursquare, reflects the human activities of a city. The mobility dynamics inferred from Foursquare helps us understanding urban social events like crime In this paper, we propose a directed graph from the aggregated movement between regions using Foursquare data. We derive region risk factor from the movement direction, quantity and crime history in different periods of the day. Later, we propose a new set of features, DIrected graph Flow FEatuRes (DIFFER) which are associated with region risk factor. The reliable correlations between DIFFER and crime count are observed. We verify the effectiveness of the DIFFER in monthly crime count using Linear, XGBoost, and Random Forest regression in two cities, Chicago and New York City.
翻译:以地点为基础的社会网络Foursquare(Foursquare)反映了一个城市的人类活动。从Foursquare(Foursquare)中推断的流动性动态有助于我们了解犯罪等城市社会事件。在本文件中,我们用四斯quare数据从区域间的总体变化中提出一个定向图表。我们从当天不同时期的移动方向、数量和犯罪历史中得出区域风险因素。我们随后提出了一套与区域风险因素相关的新特征,即DIDreced 图流FEatuRes(DIFFER)。观察到DIFFER(DIFFER)与犯罪统计之间的可靠关联。我们用Linaar、XGBoost(XGBoust)和两个城市(芝加哥和纽约市)的随机森林回归(Randir Forest)来核查DIFFER(DIFFER)在每月犯罪统计中的有效性。