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GraphsMatching

Build status Code coverage ColPrac: Contributor's Guide on Collaborative Practices for Community Packages

Matching algorithms on top of Graphs.jl.

Usage

The results of any matching is returned as a MatchingResult struct containing the mate and weight fields.

Perfect matching

g = complete_graph(4)
w = Dict{Edge,Float64}()
w[Edge(1,3)] = 10
w[Edge(1,4)] = 0.5
w[Edge(2,3)] = 11
w[Edge(2,4)] = 2
w[Edge(1,2)] = 100

# find the perfect matching of minimum weight
match = minimum_weight_perfect_matching(g, w, 50)
# match.mate[1] == 4
# match.mate[4] == 1
# match.mate[2] == 3
# match.mate[3] == 2
# match.weight ≈ 11.5

Maximum weight matching

A maximum weight matching is solved as a Linear Programming problem and requires an LP optimizer for bipartite graphs and a MILP solver for general graphs respecting the MathOptInterface optimizer interface. A list of solvers can be found in the JuMP documentation.

using JuMP, Cbc #import a MILP solver
g = complete_graph(3)
w = zeros(3,3)
w[1,2] = 1
w[3,2] = 1
w[1,3] = 1
match = maximum_weight_matching(g, optimizer_with_attributes(Cbc.Optimizer, "LogLevel" => 0),w)
# match.weight ≈ 1