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Location-based correlation estimation in social network via Collaborative Learning

机译:基于协作学习的社交网络中基于位置的相关性估计

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In social network analysis, correlation estimation is a critical part for various applications. With the prevalence of location-based services, geographic information is incorporated as a new perspective to refer the interpersonal correlation. In this paper, we propose a novel multi-scale multi-feature collaborative learning model for robust location-based correlation estimation. Geographic attributes are explored from multiple scales, and in the meantime, depicted by multiple features. Using the observed interactions as labeled data and the unobserved ones with high predictive confidence as recommended unlabeled data, the global correlation can be estimated in a collaborative way.
机译:在社交网络分析中,相关性估计是各种应用程序的关键部分。随着基于位置的服务的普及,地理信息被作为引用人际关系的新视角而被纳入。在本文中,我们提出了一种新颖的多尺度多特征协作学习模型,用于基于位置的相关性估计的鲁棒性。可以从多个尺度探索地理属性,与此同时,可以通过多个特征进行描述。使用观察到的相互作用作为标记数据,并使用具有高预测置信度的未观察到的相互作用作为推荐的未标记数据,可以以协作方式估算全局相关性。

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