论文标题

确定从偏见的随机步行中重建网络的局部特性

Identifying the perceived local properties of networks reconstructed from biased random walks

论文作者

Guerreiro, Lucas, Silva, Filipi N., Amancio, Diego R.

论文摘要

许多现实世界系统都会产生一个时间序列的符号。序列中的元素可以通过在网络空间上行走的代理生成,因此每当访问节点时,就会生成相应的符号。在许多情况下,潜在的网络被隐藏了,一个旨在恢复其原始结构和/或属性。例如,在分析文本时,不可用的基础网络结构生成特定的单词序列。在本文中,我们分析了是否可以恢复网络的基本局部属性,以生成符号序列,以进行随机步行和网络拓扑的不同组合。我们发现,重建性能受到代理动力学的偏差的影响。当步行者偏向高度邻居时,对于大多数网络模型和属性,获得了最佳性能。令人惊讶的是,即使考虑了大序列,也不会观察到聚类系数和偏心的同样效果。我们还发现,真正的自我避免的性能与偏爱高度连接的节点的性能相似,具有产生竞争性能以恢复聚类系数的优势。我们的结果可能对序列产生的网络的构建和解释有影响。

Many real-world systems give rise to a time series of symbols. The elements in a sequence can be generated by agents walking over a networked space so that whenever a node is visited the corresponding symbol is generated. In many situations the underlying network is hidden, and one aims to recover its original structure and/or properties. For example, when analyzing texts, the underlying network structure generating a particular sequence of words is not available. In this paper, we analyze whether one can recover the underlying local properties of networks generating sequences of symbols for different combinations of random walks and network topologies. We found that the reconstruction performance is influenced by the bias of the agent dynamics. When the walker is biased toward high-degree neighbors, the best performance was obtained for most of the network models and properties. Surprisingly, this same effect is not observed for the clustering coefficient and eccentric, even when large sequences are considered. We also found that the true self-avoiding displayed similar performance as the one preferring highly-connected nodes, with the advantage of yielding competitive performance to recover the clustering coefficient. Our results may have implications for the construction and interpretation of networks generated from sequences.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源