在数据库系统中实现社交网络的链接预测

Sara Cohen, Netanel Cohen-Tzemach
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引用次数: 8

摘要

由于数据的规模和复杂的查询需求,存储和查询大型社交网络是一个具有挑战性的问题。社交网络上一种常见的查询类型是链接预测,它用于为网络中的现有节点推荐新朋友。预测新链接没有黄金标准。然而,过去的工作已经有效地确定了一些很好地解决这个问题的度量。这些指标在计算复杂度上有很大的不同,例如,它们可能考虑一个节点的小邻域,在这个节点上应该预测新的链接,或者它们可能在整个社交网络图上执行随机漫步。本文考虑了在不同类型的数据库系统上实现社交网络中链接预测指标的问题。我们考虑使用关系数据库、键值存储和图数据库。我们展示了数据库系统的类型对执行链接预测的容易程度的影响。我们的研究结果在不同规模的真实社交网络上得到了广泛的实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementing link-prediction for social networks in a database system
Storing and querying large social networks is a challenging problem, due both to the scale of the data, and to intricate querying requirements. One common type of query over a social network is link prediction, which is used to suggest new friends for existing nodes in the network. There is no gold standard metric for predicting new links. However, past work has been effective at identifying a number of metrics that work well for this problem. These metrics vastly differ one from another in their computational complexity, e.g., they may consider a small neighborhood of a node for which new links should be predicted, or they may perform random walks over the entire social network graph. This paper considers the problem of implementing metrics for link prediction in a social network over different types of database systems. We consider the use of a relational database, a key-value store and a graph database. We show the type of database system affects the ease in which link prediction may be performed. Our results are empirically validated by extensive experimentation over real social networks of varying sizes.
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