Kernighan–Lin algorithm explained

The Kernighan–Lin algorithm is a heuristic algorithm for finding partitions of graphs.The algorithm has important practical application in the layout of digital circuits and components in electronic design automation of VLSI.

Description

The input to the algorithm is an undirected graph with vertex set, edge set, and (optionally) numerical weights on the edges in . The goal of the algorithm is to partition into two disjoint subsets and of equal (or nearly equal) size, in a way that minimizes the sum of the weights of the subset of edges that cross from to . If the graph is unweighted, then instead the goal is to minimize the number of crossing edges; this is equivalent to assigning weight one to each edge. The algorithm maintains and improves a partition, in each pass using a greedy algorithm to pair up vertices of with vertices of, so that moving the paired vertices from one side of the partition to the other will improve the partition. After matching the vertices, it then performs a subset of the pairs chosen to have the best overall effect on the solution quality .Given a graph with vertices, each pass of the algorithm runs in time .

In more detail, for each

a\inA

, let

Ia

be the internal cost of a, that is, the sum of the costs of edges between a and other nodes in A, and let

Ea

be the external cost of a, that is, the sum of the costs of edges between a and nodes in B. Similarly, define

Ib

,

Eb

for each

b\inB

. Furthermore, let

Ds=Es-Is

be the difference between the external and internal costs of s. If a and b are interchanged, then the reduction in cost is

Told-Tnew=Da+Db-2ca,b

where

ca,b

is the cost of the possible edge between a and b.

The algorithm attempts to find an optimal series of interchange operations between elements of

A

and

B

which maximizes

Told-Tnew

and then executes the operations, producing a partition of the graph to A and B.[1]

Pseudocode

Source:[2]

function Kernighan-Lin(G(V, E)) is determine a balanced initial partition of the nodes into sets A and B do compute D values for all a in A and b in B let gv, av, and bv be empty lists for n := 1 to |V| / 2 do find a from A and b from B, such that g = D[a] + D[b] − 2×c(a, b) is maximal remove a and b from further consideration in this pass add g to gv, a to av, and b to bv update D values for the elements of A = A \ a and B = B \ b end for find k which maximizes g_max, the sum of gv[1], ..., gv[k] if g_max > 0 then Exchange av[1], av[2], ..., av[k] with bv[1], bv[2], ..., bv[k] until (g_max ≤ 0) return G(V, E)

See also

Notes and References

  1. B. W.. Kernighan. Brian Kernighan. Shen. Lin. 1970 . An efficient heuristic procedure for partitioning graphs . Bell System Technical Journal. 49. 291–307. 10.1002/j.1538-7305.1970.tb01770.x.
  2. Book: Ravikumar, C. P . Parallel methods for VLSI layout design. Greenwood Publishing Group. 1995. 73. 978-0-89391-828-6.