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Unsupervised Feature Selection in Signed Social Networks

机译:签署的社交网络中的无监督功能选择

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The rapid growth of social media services brings a large amount of high-dimensional social media data at an unprecedented rate. Feature selection is powerful to prepare high-dimensional data by finding a subset of relevant features. A vast majority of existing feature selection algorithms for social media data exclusively focus on positive interactions among linked instances such as friendships and user following relations. However, in many real-world social networks, instances may also be negatively interconnected. Recent work shows that negative links have an added value over positive links in advancing many learning tasks. In this paper, we study a novel problem of unsupervised feature selection in signed social networks and propose a novel framework SignedFS. In particular, we provide a principled way to model positive and negative links for user latent representation learning. Then we embed the user latent representations into feature selection when label information is not available. Also, we revisit the principle of homophily and balance theory in signed social networks and incorporate the signed graph regularization into the feature selection framework to capture the first-order and the second-order proximity among users in signed social networks. Experiments on two real-world signed social networks demonstrate the effectiveness of our proposed framework. Further experiments are conducted to understand the impacts of different components of SignedFS.
机译:社交媒体服务的快速增长以前所未有的速度带来大量的高维社交媒体数据。功能选择功能强大,可以通过查找相关功能的子集来准备高维数据。广大大多数现有的特征选择算法,用于社交媒体数据专注于关联与友谊和用户之后的链接实例之间的积极交互。然而,在许多现实世界的社交网络中,实例也可能是负互连的。最近的工作表明,负链接在推进许多学习任务方面具有积极链接的附加值。在本文中,我们研究了签署的社交网络中无监督的功能选择的新问题,并提出了一种新颖的框架签名。特别是,我们为用户潜在代表学习进行了模拟正负链路的原则方法。然后,当标签信息不可用时,我们将用户潜在的表示嵌入到功能选择中。此外,我们在签名的社交网络中重新审视了奇妙和平衡理论的原则,并将签名的图形正则化纳入了特征选择框架,以捕获符号社交网络中用户之间的一阶和二阶接近度。两个真实世界签名社交网络的实验表明了我们提出的框架的有效性。进行进一步的实验,以了解不同组分的签名组分的影响。

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