Lower Bounds for the Happy Coloring Problems
June 12, 2019 Β· Declared Dead Β· π International Computing and Combinatorics Conference
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Authors
Ivan Bliznets, Danil Sagunov
arXiv ID
1906.05422
Category
cs.DS: Data Structures & Algorithms
Citations
5
Venue
International Computing and Combinatorics Conference
Last Checked
4 months ago
Abstract
In this paper, we study the Maximum Happy Vertices and the Maximum Happy Edges problems (MHV and MHE for short). Very recently, the problems attracted a lot of attention and were studied in Agrawal '17, Aravind et al. '16, Choudhari and Reddy '18, Misra and Reddy '17. Main focus of our work is lower bounds on the computational complexity of these problems. Established lower bounds can be divided into the following groups: NP-hardness of the above guarantee parameterization, kernelization lower bounds (answering questions of Misra and Reddy '17), exponential lower bounds under the Set Cover Conjecture and the Exponential Time Hypothesis, and inapproximability results. Moreover, we present an $\mathcal{O}^*(\ell^k)$ randomized algorithm for MHV and an $\mathcal{O}^*(2^k)$ algorithm for MHE, where $\ell$ is the number of colors used and $k$ is the number of required happy vertices or edges. These algorithms cannot be improved to subexponential taking proved lower bounds into account.
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