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How Fast Will You Get a Response? Predicting Interval Time for Reciprocal Link Creation

机译:你有多快?预测互酷链接创建的间隔时间

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In the recent years, reciprocal link prediction has received some attention from the data mining and social network analysis researchers, who solved this problem as a binary classification task. However, it is also important to predict the interval time for the creation of reciprocal link. This is a challenging problem for two reasons: First, the lack of effective features, because well-known link prediction features are designed for undirected networks and for the binary classification task, hence they do not work well for the interval time prediction; Second, the presence of censored data instances makes the traditional supervised regression methods unsuitable for solving this problem. In this paper, we propose a solution for the reciprocal link interval time prediction task. We map this problem into survival analysis framework and show through extensive experiments on real-world datasets that, survival analysis methods perform better than traditional regression, neural network based model and support vector regression (SVR).
机译:近年来,相互联系的预测已经得到了一些注意力从数据挖掘和社会网络分析的研究人员,谁解决了这个问题作为一个二元分类任务。然而,预测互殖链路的创建间隔时间也很重要。这是一个具有挑战性的问题,有两个原因:首先,缺乏有效的功能,因为众所周知的链接预测特征是为无向网络和二进制分类任务设计的,因此它们不适用于间隔时间预测;其次,审查的数据实例的存在使得传统的监督回归方法不适合解决这个问题。在本文中,我们提出了一种解决方案,用于互酷链接间隔时间预测任务。我们将此问题映射到生存分析框架中,并通过对现实世界数据集的广泛实验来展示,生存分析方法比传统的回归,神经网络的模型和支持向量回归(SVR)更好地表现更好。

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