论文标题
复杂网络潜在几何形状的拓扑估计
Topological estimation of the latent geometry of a complex network
论文作者
论文摘要
大多数现实世界网络都嵌入潜在的几何形状中。如果网络中的节点在潜在几何学中的另一个节点的附近找到,则两个节点的连接可能不成比例地通过链接连接。复杂网络的潜在几何形状是网络科学研究中的一个核心主题,该研究具有广泛的实用应用,例如有效的导航,缺失的链接预测和大脑映射。尽管拓扑在复杂系统的结构和功能中具有重要的作用,但几乎没有进行研究以开发一种方法来估计复杂网络的一般未知潜在几何形状。由于其令人信服的性能,拓扑数据分析引起了研究社区的广泛关注,可以直接实施到复杂的网络中。但是,即使是一小部分(0.1%)的远程链接也可以完全消除潜在几何形状的拓扑特征。受到网络中的远距离链接的启发,我们开发了一组可以分析复杂网络的潜在几何形状的方法:修改后的持久同源图和潜在几何图的地图。这些方法成功地揭示了用于验证所提出方法的合成和经验网络的拓扑特性。
Most real-world networks are embedded in latent geometries. If a node in a network is found in the vicinity of another node in the latent geometry, the two nodes have a disproportionately high probability of being connected by a link. The latent geometry of a complex network is a central topic of research in network science, which has an expansive range of practical applications such as efficient navigation, missing link prediction, and brain mapping. Despite the important role of topology in the structures and functions of complex systems, little to no study has been conducted to develop a method to estimate the general unknown latent geometry of complex networks. Topological data analysis, which has attracted extensive attention in the research community owing to its convincing performance, can be directly implemented into complex networks; however, even a small fraction (0.1%) of long-range links can completely erase the topological signature of the latent geometry. Inspired by the fact that long-range links in a network have disproportionately high loads, we develop a set of methods that can analyze the latent geometry of a complex network: the modified persistent homology diagram and the map of the latent geometry. These methods successfully reveal the topological properties of the synthetic and empirical networks used to validate the proposed methods.