Parallel recognition and location algorithms for chordal graphs using distance matrices

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Parallel recognition and location algorithms for chordal graphs using distance matrices (EN)

Nikolopoulos, Stavros D. (EN)

Πανεπιστήμιο Ιωαννίνων. Σχολή Θετικών Επιστημών. Τμήμα Μηχανικών Η/Υ & Πληροφορικής (EL)
Nikolopoulos, Stavros D. (EN)

We present efficient parallel algorithms for recognizing chordal graphs and locating all maximal cliques of a chordal graph G=(V,E). Our techniques are based on partitioning the vertex set V using information contained in the distance matrix of the graph. We use these properties to formulate parallel algorithms which, given a graph G=(V,E) and its adjacency-level sets, decide whether or not G is a chordal graph, and, if so, locate all maximal cliques of the graph in time 0(k) by using 62»n2/k processors on a CRCW-PRAM, where δ is the maximum degree of a vertex in G and 1 <k<n. The construction of the adjacency-level sets can be done by computing first the distance matrix of the graph, in time O(logn) with 0(nP+DG) processors, where DG is the output size of the partitions and β=2.376, and then extracting all necessary set information. Hence, the overall time and processor complexity of both algorithms are CXlogn) and 0(max{62*n2/Zogn, nP+D0}), respectively. These results imply that, for 6<VnZogn, the proposed algorithms improve in performance upon the best-known algorithms for these problems. (EN)

bookChapter

Parallel algorithms (EN)


English

1994

http://olympias.lib.uoi.gr/jspui/handle/123456789/26648

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