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FILE: A Novel Framework for Predicting Social Status in Signed Networks

机译:文件:一种预测签名网络中社会地位的新框架

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Link prediction in signed social networks is challenging because of the existence and imbalance of the three kinds of social status (positive, negative and no-relation). Furthermore, there are a variety types of no-relation status in reality, e.g., strangers and frenemies, which cannot be well distinguished from the other linked status by existing approaches. In this paper, we propose a novel Framework of Integrating both Latent and Explicit features (FILE), to better deal with the no-relation status and improve the overall link prediction performance in signed networks. In particular, we design two latent features from latent space and two explicit features by extending social theories, and learn these features for each user via matrix factorization with a specially designed ranking-oriented loss function. Experimental results demonstrate the superior of our approach over state-of-the-art methods.
机译:由于三种社会地位的存在和失衡(积极,负面和无关系),签署的社交网络中的链路预测是具有挑战性的。 此外,现实中存在各种类型的无关系状态,例如陌生人和果汁,不能通过现有方法与其他联系地位有利。 在本文中,我们提出了一种集成潜在和显式功能(文件)的新框架,以更好地处理无关系状态,并在签名网络中提高整体链路预测性能。 特别是,我们通过延长社会理论,设计两个潜在的功能和两个明确的功能,并通过矩阵分解,从专门设计的排名损耗函数来了解每个用户的这些功能。 实验结果表明我们在最先进的方法方面的优越。

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