单反:社交网络中属性完成和联系预测的可扩展潜在角色模型

Lizi Liao, Qirong Ho, Jing Jiang, Ee-Peng Lim
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引用次数: 6

摘要

社交网络是一个重要的网络类别,它跨越了各种各样的媒体,包括社交网站,如Facebook和b谷歌Plus,学术论文和专利的引用网络,电信的呼叫者网络,以及超链接文档集合,如维基百科等等。这些社交网络中的许多现在超过了数百万用户或参与者,每个用户或参与者都可能与丰富的属性数据相关联,例如社交网站和呼叫者网络中的用户配置文件,或文档集合和引文网络中的主题分类。由于许多原因,这些属性数据通常是不完整的——例如,用户可能不愿意花费精力来完成他们的配置文件,而在文档集合的情况下,可能没有足够的人力来准确地对所有文档进行分类。同时,这些网络中的纽带或链接信息也可能是不完整的——在社交网站中,用户可能根本不知道潜在的熟人,而在引文网络中,作者可能不知道应该引用哪些合适的文献。完成和预测这些缺失的属性和联系对于一系列应用程序(如推荐、个性化搜索和定向广告)非常重要,但是大型社交网络可能会对为此任务设计的现有算法构成可伸缩性挑战。为此,我们提出了一种综合概率模型,SLR,它可以同时捕获属性和关联信息,并可用于属性补全和关联预测,以实现上述应用。我们模型的一个关键创新是使用三角形图案来表示网络中的关系,以便扩展到具有数百万节点甚至更多节点的网络。在真实数据集上的实验表明,与已知的方法相比,SLR显著提高了属性预测和关系预测的准确性,并且我们的分布式、多机器实现很容易扩展到数百万用户。除了快速准确的属性和联系预测外,我们还展示了单反如何识别网络中最负责同质性的属性,从而揭示哪些属性驱动网络联系的形成。
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SLR: A scalable latent role model for attribute completion and tie prediction in social networks
Social networks are an important class of networks that span a wide variety of media, ranging from social websites such as Facebook and Google Plus, citation networks of academic papers and patents, caller networks in telecommunications, and hyperlinked document collections such as Wikipedia - to name a few. Many of these social networks now exceed millions of users or actors, each of which may be associated with rich attribute data such as user profiles in social websites and caller networks, or subject classifications in document collections and citation networks. Such attribute data is often incomplete for a number of reasons - for example, users may be unwilling to spend the effort to complete their profiles, while in the case of document collections, there may be insufficient human labor to accurately classify all documents. At the same time, the tie or link information in these networks may also be incomplete - in social websites, users may simply be unaware of potential acquaintances, while in citation networks, authors may be unaware of appropriate literature that should be referenced. Completing and predicting these missing attributes and ties is important to a spectrum of applications, such as recommendation, personalized search, and targeted advertising, yet large social networks can pose a scalability challenge to existing algorithms designed for this task. Towards this end, we propose an integrative probabilistic model, SLR, that captures both attribute and tie information simultaneously, and can be used for attribute completion and tie prediction, in order to enable the above mentioned applications. A key innovation in our model is the use of triangle motifs to represent ties in the network, in order to scale to networks with millions of nodes and beyond. Experiments on real world datasets show that SLR significantly improves the accuracy of attribute prediction and tie prediction compared to well-known methods, and our distributed, multi-machine implementation easily scales up to millions of users. In addition to fast and accurate attribute and tie prediction, we also demonstrate how SLR can identify the attributes most responsible for homophily within the network, thus revealing which attributes drive network tie formation.
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