Mercurial > hg > camir-aes2014
view toolboxes/FullBNT-1.0.7/graph/minimum_spanning_tree.m @ 0:e9a9cd732c1e tip
first hg version after svn
author | wolffd |
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date | Tue, 10 Feb 2015 15:05:51 +0000 |
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function A = minimum_spanning_tree(C1, C2) % % Find the minimum spanning tree using Prim's algorithm. % C1(i,j) is the primary cost of connecting i to j. % C2(i,j) is the (optional) secondary cost of connecting i to j, used to break ties. % We assume that absent edges have 0 cost. % To find the maximum spanning tree, used -1*C. % See Aho, Hopcroft & Ullman 1983, "Data structures and algorithms", p 237. % Prim's is O(V^2). Kruskal's algorithm is O(E log E) and hence is more efficient % for sparse graphs, but is implemented in terms of a priority queue. % We partition the nodes into those in U and those not in U. % closest(i) is the vertex in U that is closest to i in V-U. % lowcost(i) is the cost of the edge (i, closest(i)), or infinity is i has been used. % In Aho, they say C(i,j) should be "some appropriate large value" if the edge is missing. % We set it to infinity. % However, since lowcost is initialized from C, we must distinguish absent edges from used nodes. n = length(C1); if nargin==1, C2 = zeros(n); end A = zeros(n); closest = ones(1,n); used = zeros(1,n); % contains the members of U used(1) = 1; % start with node 1 C1(find(C1==0))=inf; C2(find(C2==0))=inf; lowcost1 = C1(1,:); lowcost2 = C2(1,:); for i=2:n ks = find(lowcost1==min(lowcost1)); k = ks(argmin(lowcost2(ks))); A(k, closest(k)) = 1; A(closest(k), k) = 1; lowcost1(k) = inf; lowcost2(k) = inf; used(k) = 1; NU = find(used==0); for ji=1:length(NU) for j=NU(ji) if C1(k,j) < lowcost1(j) lowcost1(j) = C1(k,j); lowcost2(j) = C2(k,j); closest(j) = k; end end end end