Approximate Hypergraph Coloring under Low-discrepancy and Related Promises
Vijay V. S. P. Bhattiprolu, Venkatesan Guruswami, Euiwoong Lee

TL;DR
This paper investigates the complexity of approximate hypergraph coloring under low-discrepancy and rainbow colorability conditions, providing algorithms and hardness results that improve understanding of coloring hypergraphs with stronger structural promises.
Contribution
It introduces new algorithms for coloring hypergraphs with low discrepancy and rainbow properties, and establishes hardness results that delineate the limits of approximation under these conditions.
Findings
Algorithms for coloring hypergraphs with low discrepancy using fewer colors.
Hardness results for approximate coloring under low discrepancy and rainbow conditions.
Improved inapproximability bounds assuming the Unique Games Conjecture.
Abstract
A hypergraph is said to be -colorable if its vertices can be colored with colors so that no hyperedge is monochromatic. -colorability is a fundamental property (called Property B) of hypergraphs and is extensively studied in combinatorics. Algorithmically, however, given a -colorable -uniform hypergraph, it is NP-hard to find a -coloring miscoloring fewer than a fraction of hyperedges (which is achieved by a random -coloring), and the best algorithms to color the hypergraph properly require colors, approaching the trivial bound of as increases. In this work, we study the complexity of approximate hypergraph coloring, for both the maximization (finding a -coloring with fewest miscolored edges) and minimization (finding a proper coloring using fewest number of colors) versions, when the input hypergraph is promised to…
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