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Time-aware reciprocity prediction in trust network

机译:信任网络中的时间感知互惠预测

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摘要

Study of reciprocity helps to find influential factors for users building relationships, which greatly facilitates the social behavior understanding in trust networks. In the previous literature, the dynamics of both network structure and user generated content are rarely considered. Our investigation of the available timing information from a real-world network demonstrates that time delay has significant impact on reciprocity formation. In particular, we find structural factors possess greater effect on short-term reciprocity while factors based on user generated content become more important for long-term reciprocity. Based on the empirical analysis, we redefine the reciprocity prediction problem as a learning task specific to each pair of users with different reciprocal delays. Evaluations show that our time-aware framework eventually outperforms the conventional classifiers that ignore the temporal information. Meanwhile, we tackle the problem of concept drift through fitting the evolving trend of features for Naive Bayes and performing periodic retraining for Logistic Regression classifiers, respectively.
机译:互惠性研究有助于找到影响用户建立关系的因素,从而极大地促进了信任网络中的社会行为理解。在先前的文献中,很少考虑网络结构和用户生成内容的动态。我们对来自现实世界网络的可用计时信息的调查表明,时间延迟对互惠性产生了重大影响。特别是,我们发现结构性因素对短期互惠性影响更大,而基于用户生成内容的因素对于长期互惠性则更为重要。基于经验分析,我们将互惠性预测问题重新定义为针对具有不同互惠延迟的每对用户的学习任务。评估表明,我们的时间感知框架最终优于忽略时间信息的常规分类器。同时,我们通过适应朴素贝叶斯特征的发展趋势和分别对Logistic回归分类器进行定期再训练来解决概念漂移的问题。

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