On contention resolution for the hypergraph matching, knapsack, and $k$-column sparse packing problems (2404.00041v1)
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.
- Some inequalities among binomial and poisson probabilities. In Proceedings of the Fifth Berkeley Symposium on Mathematical Statistics and Probability, Volume 1: Statistics, pages 1–12, Berkeley, Calif., 1967. University of California Press.
- Solving packing integer programs via randomized rounding with alterations. Theory of Computing, 8(1):533–565, 2012.
- Algorithms to approximate column-sparse packing problems. ACM Transactions on Algorithms, 16(1):1–32, nov 2019.
- The nonexistence of certain finite projective planes. Canadian Journal of Mathematics, 1(1):88–93, feb 1949.
- An optimal monotone contention resolution scheme for bipartite matchings via a polyhedral viewpoint. CoRR, abs/1905.08658, 2019.
- Maximizing a monotone submodular function subject to a matroid constraint. SIAM Journal on Computing, 40(6):1740–1766, jan 2011.
- Randomized metarounding. Random Structures and Algorithms, 20(3):343–352, apr 2002.
- On linear and semidefinite programming relaxations for hypergraph matching. Mathematical Programming, 135(1-2):123–148, apr 2011.
- Submodular function maximization via the multilinear relaxation and contention resolution schemes. SIAM Journal on Computing, 43(6):1831–1879, jan 2014.
- S. Chowla and H. J. Ryser. Combinatorial problems. Canadian Journal of Mathematics, 2:93–99, 1950.
- Approximation algorithms for allocation problems: Improving the factor of 1 - 1/e. In 2006 47th Annual IEEE Symposium on Foundations of Computer Science (FOCS)’06. IEEE, 2006.
- The submodular welfare problem with demand queries. Theory of Computing, 6(1):247–290, 2010.
- On the fractional matching polytope of a hypergraph. Combinatorica, 13(2):167–180, jun 1993.
- Zoltán Füredi. Maximum degree and fractional matchings in uniform hypergraphs. Combinatorica, 1(2):155–162, jun 1981.
- Understanding the correlation gap for matchings. In 37th IARCS Annual Conference on Foundations of Software Technology and Theoretical Computer Science (FSTTCS 2017), 2018.
- On the complexity of approximating k-set packing. Computational complexity, 15(1):20–39, may 2006.
- C. W. H. Lam. The search for a finite projective plane of order 10. The American Mathematical Monthly, 98(4):305, apr 1991.
- Ojas Parekh. Iterative packing for demand and hypergraph matching. In Integer Programming and Combinatoral Optimization, pages 349–361. Springer Berlin Heidelberg, 2011.
- Generalized hypergraph matching via iterated packing and local ratio. In Approximation and Online Algorithms, pages 207–223. Springer International Publishing, 2015.
- David Pritchard. Approximability of sparse integer programs. In Lecture Notes in Computer Science, pages 83–94. Springer Berlin Heidelberg, 2009.
- Approximability of sparse integer programs. Algorithmica, 61(1):75–93, jul 2010.