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Evolution of a Location-based Online Social Network: Analysis and Models

机译:基于位置的在线社交网络的演变:分析和模型

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Connections established by users of online social networks are influenced by mechanisms such as preferential attachment and triadic closure. Yet, recent research has found that geographic factors also constrain users: spatial proximity fosters the creation of online social ties. While the effect of space might need to be incorporated to these social mechanisms, it is not clear to which extent this is true and in which way this is best achieved. To address these questions, we present a measurement study of the temporal evolution of an online location-based social network. We have collected longitudinal traces over 4 months, including information about when social links are created and which places are visited by users, as revealed by their mobile check-ins. Thanks to this fine-grained temporal information, we test and compare whether different probabilistic models can explain the observed data adopting an approach based on likelihood estimation, quantitatively comparing their statistical power to reproduce real events. We demonstrate that geographic distance plays an important role in the creation of new social connections: node degree and spatial distance can be combined in a gravitational attachment process that reproduces real traces. Instead, we find that links arising because of triadic closure, where users form new ties with friends of existing friends, and because of common focus, where connections arise among users visiting the same place, appear to be mainly driven by social factors. We exploit our findings to describe a new model of network growth that combines spatial and social factors. We extensively evaluate our model and its variations, demonstrating that it is able to reproduce the social and spatial properties observed in our traces. Our results offer useful insights for systems that take advantage of the spatial properties of online social services.
机译:在线社交网络的用户建立的连接受到诸如优先依恋和三合会关闭等机制的影响。然而,最近的研究发现,地理因素也限制了用户:空间接近性促进了在线社交联系的建立。虽然可能需要将空间的影响纳入这些社会机制中,但尚不清楚这在多大程度上是正确的以及以哪种方式最好地实现了这一点。为了解决这些问题,我们提出了基于在线位置的社交网络的时间演变的度量研究。我们已经收集了超过4个月的纵向踪迹,其中包括有关何时创建社交链接以及用户访问过哪些地点的信息,如其移动值机所显示。由于有了这些细粒度的时间信息,我们可以测试和比较不同的概率模型是否可以采用基于似然估计的方法来解释观测到的数据,并定量比较它们的统计能力以重现真实事件。我们证明地理距离在建立新的社会联系中起着重要作用:节点度和空间距离可以在重现真实痕迹的引力依附过程中结合起来。取而代之的是,我们发现,由于三合会关闭而导致的链接(用户与现有朋友的朋友建立了新的联系),以及由于共同的关注点(访问同一位置的用户之间出现联系)而产生的链接似乎主要是由社会因素驱动的。我们利用我们的发现来描述结合空间和社会因素的新型网络增长模型。我们对模型及其变体进行了广泛的评估,表明该模型能够重现痕迹中观察到的社会和空间特征。我们的结果为利用在线社交服务空间特性的系统提供了有用的见解。

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