Better coloring of 3-colorable graphs
June 01, 2024 Β· Declared Dead Β· π Symposium on the Theory of Computing
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Authors
Ken-ichi Kawarabayashi, Mikkel Thorup, Hirotaka Yoneda
arXiv ID
2406.00357
Category
cs.DS: Data Structures & Algorithms
Cross-listed
math.CO
Citations
13
Venue
Symposium on the Theory of Computing
Last Checked
4 months ago
Abstract
We consider the problem of coloring a 3-colorable graph in polynomial time using as few colors as possible. This is one of the most challenging problems in graph algorithms. In this paper using Blum's notion of ``progress'', we develop a new combinatorial algorithm for the following: Given any 3-colorable graph with minimum degree $\ds>\sqrt n$, we can, in polynomial time, make progress towards a $k$-coloring for some $k=\sqrt{n/\ds}\cdot n^{o(1)}$. We balance our main result with the best-known semi-definite(SDP) approach which we use for degrees below $n^{0.605073}$. As a result, we show that $\tO(n^{0.19747})$ colors suffice for coloring 3-colorable graphs. This improves on the previous best bound of $\tO(n^{0.19996})$ by Kawarabayashi and Thorup in 2017.
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