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SLIND: Identifying Stable Links in Online Social Networks

机译:SLIND:确定在线社交网络中的稳定链接

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摘要

Link stability detection has been an important and longstanding problem in the link prediction domain. However, it is often easily overlooked as being trivial and has not been adequately dealt with in link prediction [1]. In this demo, we introduce an innovative link stability detection system, called SLIND (Stable LINk Detection), that adopts a Multi-Variate Vector Autoregression analysis (MVVA) approach using link dynamics to establish stability confidence scores of links within a clique of nodes in online social networks (OSN) to improve detection accuracy and the representation of stable links. SLIND is also able to determine stable links through the use of partial feature information and potentially scales well to much larger datasets with very little accuracy to performance trade-offs using random walk Monte-Carlo estimates.
机译:在链路预测领域中,链路稳定性检测一直是重要且长期存在的问题。然而,它通常很容易被忽略,因为它是微不足道的,并且在链路预测中并未得到适当的处理[1]。在本演示中,我们介绍了一种创新的链路稳定性检测系统,称为SLIND(稳定LINk检测),该系统采用多变量矢量自回归分析(MVVA)方法,利用链路动力学来建立节点中多个节点内链路的稳定性置信度得分。在线社交网络(OSN),以提高检测准确性和稳定链接的表示。 SLIND还能够通过使用部分特征信息来确定稳定的链接,并有可能很好地扩展到更大的数据集,而使用随机游走蒙特卡洛估计在性能折衷方面的准确性非常低。

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