Karrer Brian, Newman M E J
Department of Physics, University of Michigan, Ann Arbor, Michigan 48109, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2009 Oct;80(4 Pt 2):046110. doi: 10.1103/PhysRevE.80.046110. Epub 2009 Oct 15.
We study random graph models for directed acyclic graphs, a class of networks that includes citation networks, food webs, and feed-forward neural networks among others. We propose two specific models roughly analogous to the fixed edge number and fixed edge probability variants of traditional undirected random graphs. We calculate a number of properties of these models, including particularly the probability of connection between a given pair of vertices, and compare the results with real-world acyclic network data finding that theory and measurements agree surprisingly well-far better than the often poor agreement of other random graph models with their corresponding real-world networks.
我们研究有向无环图的随机图模型,这类网络包括引文网络、食物网和前馈神经网络等。我们提出了两种具体模型,大致类似于传统无向随机图的固定边数和固定边概率变体。我们计算了这些模型的一些属性,特别是给定一对顶点之间的连接概率,并将结果与真实世界的无环网络数据进行比较,发现理论与测量结果惊人地吻合——远比其他随机图模型与其相应真实世界网络之间常常不佳的吻合度要好得多。