On Maximum Common Subgraph Problems in Series-Parallel Graphs
August 09, 2017 Β· Declared Dead Β· π European journal of combinatorics (Print)
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Authors
Nils Kriege, Florian Kurpicz, Petra Mutzel
arXiv ID
1708.02772
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CC
Citations
15
Venue
European journal of combinatorics (Print)
Last Checked
3 months ago
Abstract
The complexity of the maximum common connected subgraph problem in partial $k$-trees is still not fully understood. Polynomial-time solutions are known for degree-bounded outerplanar graphs, a subclass of the partial $2$-trees. On the other hand, the problem is known to be ${\bf NP}$-hard in vertex-labeled partial $11$-trees of bounded degree. We consider series-parallel graphs, i.e., partial $2$-trees. We show that the problem remains ${\bf NP}$-hard in biconnected series-parallel graphs with all but one vertex of degree $3$ or less. A positive complexity result is presented for a related problem of high practical relevance which asks for a maximum common connected subgraph that preserves blocks and bridges of the input graphs. We present a polynomial time algorithm for this problem in series-parallel graphs, which utilizes a combination of BC- and SP-tree data structures to decompose both graphs.
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