Link recommendation has attracted significant attentions from both industry practitioners and academic researchers. In industry, link recommendation has become a standard and most important feature in online social networks, prominent examples of which include "People You May Know" on LinkedIn and "You May Know" on Google+. In academia, link recommendation has been and remains a highly active research area. This paper surveys state-of-the-art link recommendation methods, which can be broadly categorized into learning-based methods and proximity-based methods. We further identify social and economic theories, such as social interaction theory, that underlie these methods and explain from a theoretical perspective why a link recommendation method works. Finally, we propose to extend link recommendation research in several directions that include utility-based link recommendation, diversity of link recommendation, link recommendation from incomplete data, and experimental study of link recommendation.
翻译:链接建议吸引了业界从业人员和学术研究人员的极大关注。在行业中,链接建议已成为在线社交网络中一个标准和最重要的特征,其中突出的例子包括“链接中你可能知道的人”和“谷歌+”上的“你可能知道的人”。在学术界,链接建议过去和现在都是一个非常活跃的研究领域。本文调查了最新的链接建议方法,这些方法可以广泛分为学习方法和近距离方法。我们进一步确认了社会和经济理论,例如社会互动理论,这些理论是这些方法的基础,并从理论角度解释了连接建议方法为何起作用。最后,我们提议将建议研究的范围扩大到几个方向,其中包括基于实用链接的建议、链接建议的多样性、来自不完整数据的联系建议以及连接建议的实验性研究。