핵심 개념
There is a statistical-computational gap of a multiplicative factor of r^(-1/(r-1)) in the density of the largest independent set that can be found by low-degree polynomial algorithms in sparse random r-uniform hypergraphs and r-partite hypergraphs.
초록
The content discusses the algorithmic task of finding large independent sets in sparse Erdős–Rényi random r-uniform hypergraphs and r-partite hypergraphs.
Key highlights:
- Krivelevich and Sudakov showed that the maximum independent set has density (r/(r-1)) * (log d/d)^(1/(r-1)) in the double limit n→∞ followed by d→∞.
- The authors show that low-degree polynomial algorithms can find independent sets of density (1/(r-1)) * (log d/d)^(1/(r-1)) but no larger. This extends and generalizes earlier results for graphs.
- The authors conjecture that this statistical-computational gap of a multiplicative factor of r^(-1/(r-1)) indeed holds for this problem.
- The authors also explore the universality of this gap by examining r-partite hypergraphs. They prove an analogous computational threshold for finding large balanced independent sets in random r-uniform r-partite hypergraphs.
- This work is the first to consider statistical-computational gaps of optimization problems on random hypergraphs, suggesting that these gaps persist for larger uniformities as well as across many models.
통계
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인용구
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