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Ultrafast Distributed Coloring of High Degree Graphs (2105.04700v1)

Published 10 May 2021 in cs.DC and cs.DS

Abstract: We give a new randomized distributed algorithm for the $\Delta+1$-list coloring problem. The algorithm and its analysis dramatically simplify the previous best result known of Chang, Li, and Pettie [SICOMP 2020]. This allows for numerous refinements, and in particular, we can color all $n$-node graphs of maximum degree $\Delta \ge \log{2+\Omega(1)} n$ in $O(\log* n)$ rounds. The algorithm works in the CONGEST model, i.e., it uses only $O(\log n)$ bits per message for communication. On low-degree graphs, the algorithm shatters the graph into components of size $\operatorname{poly}(\log n)$ in $O(\log* \Delta)$ rounds, showing that the randomized complexity of $\Delta+1$-list coloring in CONGEST depends inherently on the deterministic complexity of related coloring problems.

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