Better Edges not Bigger Graphs: An Interaction-Driven Friendship Recommender Algorithm for Social Networks

Aadil Alshammari, A. Rezgui
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Abstract

Online social networks have been increasingly growing over the past few years. One of the critical factors that drive these social networks’ success and growth is the friendship recommender algorithms, which are used to suggest relationships between users. Current friending algorithms are designed to recommend friendship connections that are easily accepted. Yet, most of these accepted relationships do not lead to any interactions. We refer to these relationships as weak connections. Facebook’s Friends-of-Friends (FoF) algorithm is an example of a friending algorithm that generates friendship recommendations with a high acceptance rate. However, a considerably high percentage of Facebook algorithm’s recommendations are of weak connections. The metric of measuring the accuracy of friendship recommender algorithms by acceptance rate does not correlate with the level of interactions, i.e., how much connected friends interact with one another. Consequently, new metrics and friendship recommenders are needed to form the next generation of social networks by generating better edges instead of merely growing the social graph with weak edges. This paper is a step towards this vision. We first introduce a new metric to measure the accuracy of friending recommendations by the probability that they lead to interactions. We then briefly investigate existing recommender systems and their limitations. We also highlight the consequences of recommending weak relationships within online social networks. To overcome the limitations of current friending algorithms, we present and evaluate a novel approach that generates friendship recommendations that have a higher probability of leading to interactions between users than existing friending algorithms.
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更好的边而不是更大的图:社交网络的互动驱动的友谊推荐算法
在线社交网络在过去几年中不断发展壮大。推动这些社交网络成功和发展的关键因素之一是友情推荐算法,它用于推荐用户之间的关系。目前的交友算法被设计成推荐容易被接受的朋友关系。然而,大多数这些被接受的关系并不会导致任何互动。我们把这些关系称为弱连接。Facebook的Friends-of-Friends (FoF)算法就是一个好友算法的例子,它可以生成高接受率的好友推荐。然而,相当高比例的Facebook算法推荐是弱连接。通过接受率来衡量友谊推荐算法准确性的度量与互动水平无关,即,有多少连接的朋友彼此互动。因此,我们需要新的指标和好友推荐,通过生成更好的边缘来形成下一代社交网络,而不是仅仅增加带有弱边缘的社交图谱。本文是朝着这一愿景迈出的一步。我们首先引入了一个新的指标,通过它们导致互动的概率来衡量好友推荐的准确性。然后,我们简要地调查了现有的推荐系统及其局限性。我们还强调了在在线社交网络中推荐弱关系的后果。为了克服当前好友算法的局限性,我们提出并评估了一种生成好友推荐的新方法,该方法比现有的好友算法更有可能导致用户之间的交互。
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