2,848 research outputs found

    From Gap-ETH to FPT-Inapproximability: Clique, Dominating Set, and More

    Full text link
    We consider questions that arise from the intersection between the areas of polynomial-time approximation algorithms, subexponential-time algorithms, and fixed-parameter tractable algorithms. The questions, which have been asked several times (e.g., [Marx08, FGMS12, DF13]), are whether there is a non-trivial FPT-approximation algorithm for the Maximum Clique (Clique) and Minimum Dominating Set (DomSet) problems parameterized by the size of the optimal solution. In particular, letting OPT\text{OPT} be the optimum and NN be the size of the input, is there an algorithm that runs in t(OPT)poly(N)t(\text{OPT})\text{poly}(N) time and outputs a solution of size f(OPT)f(\text{OPT}), for any functions tt and ff that are independent of NN (for Clique, we want f(OPT)=ω(1)f(\text{OPT})=\omega(1))? In this paper, we show that both Clique and DomSet admit no non-trivial FPT-approximation algorithm, i.e., there is no o(OPT)o(\text{OPT})-FPT-approximation algorithm for Clique and no f(OPT)f(\text{OPT})-FPT-approximation algorithm for DomSet, for any function ff (e.g., this holds even if ff is the Ackermann function). In fact, our results imply something even stronger: The best way to solve Clique and DomSet, even approximately, is to essentially enumerate all possibilities. Our results hold under the Gap Exponential Time Hypothesis (Gap-ETH) [Dinur16, MR16], which states that no 2o(n)2^{o(n)}-time algorithm can distinguish between a satisfiable 3SAT formula and one which is not even (1ϵ)(1 - \epsilon)-satisfiable for some constant ϵ>0\epsilon > 0. Besides Clique and DomSet, we also rule out non-trivial FPT-approximation for Maximum Balanced Biclique, Maximum Subgraphs with Hereditary Properties, and Maximum Induced Matching in bipartite graphs. Additionally, we rule out ko(1)k^{o(1)}-FPT-approximation algorithm for Densest kk-Subgraph although this ratio does not yet match the trivial O(k)O(k)-approximation algorithm.Comment: 43 pages. To appear in FOCS'1

    Reoptimization of Some Maximum Weight Induced Hereditary Subgraph Problems

    Get PDF
    The reoptimization issue studied in this paper can be described as follows: given an instance I of some problem Π, an optimal solution OPT for Π in I and an instance I′ resulting from a local perturbation of I that consists of insertions or removals of a small number of data, we wish to use OPT in order to solve Π in I', either optimally or by guaranteeing an approximation ratio better than that guaranteed by an ex nihilo computation and with running time better than that needed for such a computation. We use this setting in order to study weighted versions of several representatives of a broad class of problems known in the literature as maximum induced hereditary subgraph problems. The main problems studied are max independent set, max k-colorable subgraph and max split subgraph under vertex insertions and deletion

    A Branch-and-Reduce Algorithm for Finding a Minimum Independent Dominating Set

    Full text link
    An independent dominating set D of a graph G = (V,E) is a subset of vertices such that every vertex in V \ D has at least one neighbor in D and D is an independent set, i.e. no two vertices of D are adjacent in G. Finding a minimum independent dominating set in a graph is an NP-hard problem. Whereas it is hard to cope with this problem using parameterized and approximation algorithms, there is a simple exact O(1.4423^n)-time algorithm solving the problem by enumerating all maximal independent sets. In this paper we improve the latter result, providing the first non trivial algorithm computing a minimum independent dominating set of a graph in time O(1.3569^n). Furthermore, we give a lower bound of \Omega(1.3247^n) on the worst-case running time of this algorithm, showing that the running time analysis is almost tight.Comment: Full version. A preliminary version appeared in the proceedings of WG 200
    corecore