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On contention resolution for the hypergraph matching, knapsack, and $k$-column sparse packing problems (2404.00041v1)

Published 24 Mar 2024 in cs.DS and math.OC

Abstract: The contention resolution framework is a versatile rounding technique used as a part of the relaxation and rounding approach for solving constrained submodular function maximization problems. We apply this framework to the hypergraph matching, knapsack, and $k$-column sparse packing problems. In the hypergraph matching setting, we adapt the technique of Guruganesh, Lee (2018) to non-constructively prove that the correlation gap is at least $\frac{1-e{-k}}{k}$ and provide a monotone $\left(b,\frac{1-e{-bk}}{bk}\right)$-balanced contention resolution scheme, generalizing the results of Bruggmann, Zenklusen (2019). For the knapsack problem, we prove that the correlation gap of instances where exactly $k$ copies of each item fit into the knapsack is at least $\frac{1-e{-2}}{2}$ and provide several monotone contention resolution schemes: a $\frac{1-e{-2}}{2}$-balanced scheme for instances where all item sizes are strictly bigger than $\frac{1}{2}$, a $\frac{4}{9}$-balanced scheme for instances where all item sizes are at most $\frac{1}{2}$, and a $0.279$-balanced scheme for instances with arbitrary item sizes. For $k$-column sparse packing integer programs, we slightly modify the $\left(2k+o\left(k\right)\right)$-approximation algorithm for $k$-CS-PIP based on the strengthened LP relaxation presented in Brubach et al. (2019) to obtain a $\frac{1}{4k+o\left(k\right)}$-balanced contention resolution scheme and hence a $\left(4k+o\left(k\right)\right)$-approximation algorithm for $k$-CS-PIP based on the natural LP relaxation.

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