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Distance-2 Coloring in the CONGEST Model

13 May 2020
Magnús M. Halldórsson
Fabian Kuhn
Yannic Maus
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Abstract

We give efficient randomized and deterministic distributed algorithms for computing a distance-222 vertex coloring of a graph GGG in the CONGEST model. In particular, if Δ\DeltaΔ is the maximum degree of GGG, we show that there is a randomized CONGEST model algorithm to compute a distance-222 coloring of GGG with Δ2+1\Delta^2+1Δ2+1 colors in O(log⁡Δ⋅log⁡n)O(\log\Delta\cdot\log n)O(logΔ⋅logn) rounds. Further if the number of colors is slightly increased to (1+ϵ)Δ2(1+\epsilon)\Delta^2(1+ϵ)Δ2 for some ϵ>1/polylog(n)\epsilon>1/{\rm polylog}(n)ϵ>1/polylog(n), we show that it is even possible to compute a distance-222 coloring deterministically in polylog(n)(n)(n) time in the CONGEST model. Finally, we give a O(Δ2+log⁡∗n)O(\Delta^2 + \log^* n)O(Δ2+log∗n)-round deterministic CONGEST algorithm to compute distance-222 coloring with Δ2+1\Delta^2+1Δ2+1 colors.

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