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A Dynamic Model for On-Line Social Networks

机译:在线社交网络的动态模型

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摘要

We present a deterministic model for on-line social networks based on transitivity and local knowledge in social interactions. In the Iterated Local Transitivity (ILT) model, at each time-step and for every existing node x, a new node appears which joins to the closed neighbour set of x. The ILT model provably satisfies a number of both local and global properties that were observed in real-world on-line social and other complex networks, such as a densification power law, decreasing average distance, and higher clustering than in random graphs with the same average degree. Experimental studies of social networks demonstrate poor expansion properties as a consequence of the existence of communities with low number of inter-community links. A spectral gap for both the adjacency and normalized Laplacian matrices is proved for graphs arising from the ILT model, thereby simulating such bad expansion properties.
机译:我们提出了基于传递性和社交互动中的本地知识的在线社交网络确定性模型。在迭代局部可传递性(ILT)模型中,在每个时间步长以及对于每个现有节点x,都会出现一个新节点,该节点加入到x的封闭邻居集合中。 ILT模型可证明地满足了在现实世界中的在线社交网络和其他复杂网络中观察到的许多局部和全局属性,例如,密度幂律,平均距离减小以及比具有相同随机图的随机图更高的聚类平均程度。社会网络的实验研究表明,由于社区间链接数量少的社区的存在,扩展性较差。对于由ILT模型产生的图,证明了邻接和归一化拉普拉斯矩阵的谱隙,从而模拟了这种不良的扩展特性。

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