865 research outputs found

    Induced Minor Free Graphs: Isomorphism and Clique-width

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    Given two graphs GG and HH, we say that GG contains HH as an induced minor if a graph isomorphic to HH can be obtained from GG by a sequence of vertex deletions and edge contractions. We study the complexity of Graph Isomorphism on graphs that exclude a fixed graph as an induced minor. More precisely, we determine for every graph HH that Graph Isomorphism is polynomial-time solvable on HH-induced-minor-free graphs or that it is GI-complete. Additionally, we classify those graphs HH for which HH-induced-minor-free graphs have bounded clique-width. These two results complement similar dichotomies for graphs that exclude a fixed graph as an induced subgraph, minor, or subgraph.Comment: 16 pages, 5 figures. An extended abstract of this paper previously appeared in the proceedings of the 41st International Workshop on Graph-Theoretic Concepts in Computer Science (WG 2015

    Fully polynomial FPT algorithms for some classes of bounded clique-width graphs

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    Parameterized complexity theory has enabled a refined classification of the difficulty of NP-hard optimization problems on graphs with respect to key structural properties, and so to a better understanding of their true difficulties. More recently, hardness results for problems in P were achieved using reasonable complexity theoretic assumptions such as: Strong Exponential Time Hypothesis (SETH), 3SUM and All-Pairs Shortest-Paths (APSP). According to these assumptions, many graph theoretic problems do not admit truly subquadratic algorithms, nor even truly subcubic algorithms (Williams and Williams, FOCS 2010 and Abboud, Grandoni, Williams, SODA 2015). A central technique used to tackle the difficulty of the above mentioned problems is fixed-parameter algorithms for polynomial-time problems with polynomial dependency in the fixed parameter (P-FPT). This technique was introduced by Abboud, Williams and Wang in SODA 2016 and continued by Husfeldt (IPEC 2016) and Fomin et al. (SODA 2017), using the treewidth as a parameter. Applying this technique to clique-width, another important graph parameter, remained to be done. In this paper we study several graph theoretic problems for which hardness results exist such as cycle problems (triangle detection, triangle counting, girth, diameter), distance problems (diameter, eccentricities, Gromov hyperbolicity, betweenness centrality) and maximum matching. We provide hardness results and fully polynomial FPT algorithms, using clique-width and some of its upper-bounds as parameters (split-width, modular-width and P_4P\_4-sparseness). We believe that our most important result is an O(k4â‹…n+m){\cal O}(k^4 \cdot n + m)-time algorithm for computing a maximum matching where kk is either the modular-width or the P_4P\_4-sparseness. The latter generalizes many algorithms that have been introduced so far for specific subclasses such as cographs, P_4P\_4-lite graphs, P_4P\_4-extendible graphs and P_4P\_4-tidy graphs. Our algorithms are based on preprocessing methods using modular decomposition, split decomposition and primeval decomposition. Thus they can also be generalized to some graph classes with unbounded clique-width

    FPT algorithms to recognize well covered graphs

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    Given a graph GG, let vc(G)vc(G) and vc+(G)vc^+(G) be the sizes of a minimum and a maximum minimal vertex covers of GG, respectively. We say that GG is well covered if vc(G)=vc+(G)vc(G)=vc^+(G) (that is, all minimal vertex covers have the same size). Determining if a graph is well covered is a coNP-complete problem. In this paper, we obtain O∗(2vc)O^*(2^{vc})-time and O∗(1.4656vc+)O^*(1.4656^{vc^+})-time algorithms to decide well coveredness, improving results of Boria et. al. (2015). Moreover, using crown decomposition, we show that such problems admit kernels having linear number of vertices. In 2018, Alves et. al. (2018) proved that recognizing well covered graphs is coW[2]-hard when the independence number α(G)=n−vc(G)\alpha(G)=n-vc(G) is the parameter. Contrasting with such coW[2]-hardness, we present an FPT algorithm to decide well coveredness when α(G)\alpha(G) and the degeneracy of the input graph GG are aggregate parameters. Finally, we use the primeval decomposition technique to obtain a linear time algorithm for extended P4P_4-laden graphs and (q,q−4)(q,q-4)-graphs, which is FPT parameterized by qq, improving results of Klein et al (2013).Comment: 15 pages, 2 figure

    Oriented coloring on recursively defined digraphs

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    Coloring is one of the most famous problems in graph theory. The coloring problem on undirected graphs has been well studied, whereas there are very few results for coloring problems on directed graphs. An oriented k-coloring of an oriented graph G=(V,A) is a partition of the vertex set V into k independent sets such that all the arcs linking two of these subsets have the same direction. The oriented chromatic number of an oriented graph G is the smallest k such that G allows an oriented k-coloring. Deciding whether an acyclic digraph allows an oriented 4-coloring is NP-hard. It follows, that finding the chromatic number of an oriented graph is an NP-hard problem. This motivates to consider the problem on oriented co-graphs. After giving several characterizations for this graph class, we show a linear time algorithm which computes an optimal oriented coloring for an oriented co-graph. We further prove how the oriented chromatic number can be computed for the disjoint union and order composition from the oriented chromatic number of the involved oriented co-graphs. It turns out that within oriented co-graphs the oriented chromatic number is equal to the length of a longest oriented path plus one. We also show that the graph isomorphism problem on oriented co-graphs can be solved in linear time.Comment: 14 page
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