Contextual Prediction of Communication Flow in Social Networks

M. Choudhury, H. Sundaram, A. John, D. Seligmann
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引用次数: 25

Abstract

The paper develops a novel computational framework for predicting communication flow in social networks based on several contextual features. The problem is important because prediction of communication flow can impact timely sharing of specific information across a wide array of communities. We determine the intent to communicate and communication delay between users based on several contextual features in a social network corresponding to (a) neighborhood context, (b) topic context and (c) recipient context. The intent to communicate and communication delay are modeled as regression problems which are efficiently estimated using Support Vector Regression. We predict the intent and the delay, on an interval of time using past communication data. We have excellent prediction results on a real-world dataset from MySpace.com with an accuracy of 13-16%. We show that the intent to communicate is more significantly influenced by contextual factors compared to the delay.
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社交网络中交际流的语境预测
本文提出了一种基于上下文特征的社交网络通信流预测计算框架。这个问题很重要,因为对通信流的预测会影响在广泛的社区中及时共享特定信息。我们根据社交网络中的几个上下文特征来确定用户之间的通信意图和通信延迟,这些特征对应于(a)邻里上下文,(b)主题上下文和(c)接收者上下文。将通信意图和通信延迟建模为回归问题,并利用支持向量回归对其进行有效估计。我们利用过去的通信数据在一段时间间隔内预测意图和延迟。我们在MySpace.com的真实数据集上有很好的预测结果,准确率为13-16%。我们发现语境因素比延迟因素更能显著影响交际意图。
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