GenRMat (SWIG)¶
-
GenRMat
(Nodes, Edges, A, B, C, Rnd=TRnd)
Generates an R-MAT directed graph using recursive descent into a 2x2 matrix [A,B; C, 1-(A+B+C)].
Parameters:
- Nodes: int (input)
The number of nodes used to generate the graph.
- Edges: int (input)
The number of edges used to generate the graph.
- A: float (input)
Probability of an edge falling into the A partition in the R-MAT model.
- B: float (input)
Probability of an edge falling into the B partition in the R-MAT model.
- C: float (input)
Probability of an edge falling into the C partition in the R-MAT model.
- Rnd:
TRnd
(input) Random number generator .
- Rnd:
Return value:
- directed graph
A Snap.py directed R-MAT graph.
For more info see: “R-MAT Generator: A Recursive Model for Graph Mining.” D. Chakrabarti, Y. Zhan and C. Faloutsos, in SIAM Data Mining 2004. URL: http://www.cs.cmu.edu/~deepay/mywww/papers/siam04.pdf
The following example shows how to generate an R-MAT graph:
import snap
Rnd = snap.TRnd()
Graph = snap.GenRMat(1000, 2000, .6, .1, .15, Rnd)
for EI in Graph.Edges():
print("edge: (%d, %d)" % (EI.GetSrcNId(), EI.GetDstNId()))