你们是怎样的亲戚?利用呼叫图数据预测社会关系的类型

Krishna Janakiraman, Sara Gatmir-Motahari
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引用次数: 5

摘要

人与人之间通过电话所定义的社会关系可以分为不同的关系类型或类别,如家庭成员、同事等。我们提出并评估了一种方法,该方法使用抽象其通信行为和社交网络模式的特征来预测一对移动电话用户之间的“关系类型”。我们的数据集包括从四个人口统计学不同的地区抽样的主要无线运营商的呼叫详细记录,从中我们建立了一个有向社交图,有超过20万个顶点和40万个边。使用帐户和订阅计划信息,我们将图中的每条边标记为以下四种关系之一:家庭、同事、客户和服务。我们对数据集的分析表明,这四种关系类型表现出不同的交流行为模式,并在其周围的社交网络上产生特征拓扑特征。例如,与有服务或同事关系的用户相比,有家庭关系的用户对产生的平均呼叫次数高,呼叫时间短,呼叫频率高,共享更多的相互联系。使用抽象这些特征的一组特征和随机森林监督机器学习分类器,我们证明可以预测订阅者对之间的关系类型,准确率为87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Are You Related? Predicting the Type of a Social Relationship Using Call Graph Data
Social relationships defined by phone calls made between people can be grouped into various relationship types or categories, such as family members, co-workers, etc. We propose and evaluate a method that predicts the "relationship type" between a pair of mobile phone subscribers using features that abstract their communication behavior and social network patterns. Our dataset consists of call detail records of a major wireless carrier sampled from four demographically diverse regions, from which we built a directed social graph, with over 200,000 vertices and 400,000 edges. Using account and subscription plan information, we labeled each edge in the graph as one of the following four relationships: family, co-worker, customer and service. Our analysis of the dataset shows that these four relationship types exhibit distinct communication behavior patterns and generate characteristic topological features on the social network surrounding the pairs. For instance, subscriber pairs with a family relationship generate high average number of calls, have low call duration, call more frequently and share more mutual contacts than pairs with a service or co-worker relationship. Using a set of features that abstract these characteristics and the Random Forest supervised machine learning classifier, we demonstrate that it is possible to predict the relationship type between a subscriber pair with an accuracy of 87%.
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