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geographical_threshold_graph¶
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geographical_threshold_graph
(n, theta, alpha=2, dim=2, pos=None, weight=None)[source]¶ Return a geographical threshold graph.
The geographical threshold graph model places n nodes uniformly at random in a rectangular domain. Each node \(u\) is assigned a weight \(w_u\). Two nodes \(u,v\) are connected with an edge if
\[w_u + w_v \ge \theta r^{\alpha}\]where \(r\) is the Euclidean distance between \(u\) and \(v\), and \(\theta\), \(\alpha\) are parameters.
Parameters: n : int
Number of nodes
theta: float
Threshold value
alpha: float, optional
Exponent of distance function
dim : int, optional
Dimension of graph
pos : dict
Node positions as a dictionary of tuples keyed by node.
weight : dict
Node weights as a dictionary of numbers keyed by node.
Returns: Graph
Notes
If weights are not specified they are assigned to nodes by drawing randomly from an the exponential distribution with rate parameter \(\lambda=1\). To specify a weights from a different distribution assign them to a dictionary and pass it as the weight= keyword
>>> import random >>> n = 20 >>> w=dict((i,random.expovariate(5.0)) for i in range(n)) >>> G = nx.geographical_threshold_graph(20,50,weight=w)
If node positions are not specified they are randomly assigned from the uniform distribution.
References
[R295] Masuda, N., Miwa, H., Konno, N.: Geographical threshold graphs with small-world and scale-free properties. Physical Review E 71, 036108 (2005) [R296] Milan Bradonjić, Aric Hagberg and Allon G. Percus, Giant component and connectivity in geographical threshold graphs, in Algorithms and Models for the Web-Graph (WAW 2007), Antony Bonato and Fan Chung (Eds), pp. 209–216, 2007 Examples
>>> G = nx.geographical_threshold_graph(20,50)