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Crossing minimization in layered graphs

Problem Description

The standard approach for drawing hierarchical network diagrams is a three phase approach in which (a) nodes in the graph are assigned levels producing a k-level graph; (b) nodes are assigned an order so as to minimize edge crossings in the k-level graph; and (c) the edge routes and node positions are computed. There has been considerable research into step (b) which is ccalled k-level crossing minimization. Unfortunately this step is NP-hard for even two layers (k = 2) where the ordering on one layer is given. Thus, research has focussed on developing heuristics to solve it. In practice the approach is to iterate through the levels, re-ordering the nodes on each level using heuristic techniques such as the barycentric method. Recently it was shown that modern optimization technology can tackle the complete k-level crossing minimization problem at least for small to medium sized graphs, generating optimal crossings.

Predicates

Input format

The predicates layers/1 and in_layer/2 give the partitioning of nodes into layers. For convenience, width/2 gives the number of nodes in a layer. For example

layers(2). width(0, 2). in_layer(0,n1). in_layer(0,n2). width(1, 1). in_layer(1,n3).

defines two layers, layer 0 containing nodes {n1, n2} and layer 1 containing {n3}.

The predicate edge/2 defines edges between nodes. For example

edge(n1,n3). edge(n2,n3).

Output format

A solution to the problem is an assignment of each node to a position in its layer, which minimizes the number of crossings in the graph. This is given by the position/2 predicate, where position(n,3) assigns node 'n' to the third position in its layer.

Example

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