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GraphTheory[RandomGraphs][RandomTournament]
Calling Sequence
RandomTournament(n,options)
Parameters
n
-
positive integer or list of vertex labels
options
sequence of options (see below)
Description
RandomTournament(n) creates a random tournament on n vertices. This is a directed graph such that for every pair of vertices u and v either the arc u to v or the arc v to u is in the digraph.
If the first input is a positive integer n, then the vertices are labeled 1,2,...,n. Alternatively you may specify the vertex labels in a list.
If the option weights=m..n is specified, where m <= n are integers, the graph is a weighted graph with edge weights chosen from [m,n] uniformly at random. The weight matrix W in the graph has datatype=integer, and if the edge from vertex i to j is not in the graph then W[i,j] = 0.
If the option weights=x..y where x <= y are decimals is specified, the graph is a weighted graph with numerical edge weights chosen from [x,y] uniformly at random. The weight matrix W in the graph has datatype=float[8], that is, double precision floats (16 decimal digits), and if the edge from vertex i to j is not in the graph then W[i,j] = 0.0.
If the option weights=f where f is a function (a Maple procedure) that returns a number (integer, rational, or decimal number), then f is used to generate the edge weights. The weight matrix W in the graph has datatype=anything, and if the edge from vertex i to j is not in the graph then W[i,j] = 0.
The random number generator used can be seeded using the randomize function.
Examples
See Also
AssignEdgeWeights, GraphTheory[IsTournament], GraphTheory[WeightMatrix], RandomBipartiteGraph, RandomDigraph, RandomGraph, RandomNetwork, RandomTree
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