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Modeling the Temporal Dynamics of Social Rating Networks Using Bidirectional Effects of Social Relations and Rating Patterns

机译:使用社会关系和评级模式的双向效果建模社会评级网络的时间动态

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In this paper we first observe and analyze the temporal behavior of users in a social rating network on expressing ratings and creating social relations. Then, we model the temporal dynamics of a SRN based on our observations and using bidirectional effects of ratings and social relationships. While existing models for other types of social networks have captured some of the factors, our model is the first one to represent all four factors, i.e. social relations-on-ratings (social influence), social relations-on-social relations (transitivity), ratings-on-social relations (selection), and ratings-on-ratings (correlational influence). We also model the strength of each effect throughout the evolution of a SRN. Using our model, we develop a generative model for SRNs. Such a model can serve as basis for several purposes, in particular link prediction, rating prediction and prediction of future community structures. Given the sensitive nature of social network data, there are only very few public social rating network datasets. This motivates the development of generative models to create such synthetic datasets for research purposes. Our experimental study on the Epinions dataset demonstrates that the proposed model produces social rating networks that agree with real world data on a comprehensive set of evaluation criteria much better than existing models.
机译:在本文中,我们首先观察和分析了在社会评级网络中表达评级和建立社会关系的社会评级网络中的时间行为。然后,我们根据我们的观察和使用评级和社会关系的双向效果来模拟SRN的时间动态。虽然其他类型的社交网络的现有模型捕获了一些因素,但我们的模型是第一个代表所有四个因素,即社会关系(社会影响),社会关系社会关系(转运) ,评级 - 社会关系(选择),以及额定评级(相关影响)。我们还模拟了整个SRN演进过程中的每种效果的强度。使用我们的模型,我们为SRNS开发了一个生成模型。这样的模型可以用作几种目的,特别是链路预测,评级预测和未来社区结构的预测。鉴于社交网络数据的敏感性,只有很少的公共社交评级网络数据集。这激励了生成模型的开发,以创建这些合成数据集以进行研究目的。我们对介绍数据集的实验研究表明,拟议的模型产生社会评级网络,这些网络与综合评价标准的真实世界数据同意,比现有模型更好。

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