Brooks' Theorem in Graph Streams: A Single-Pass Semi-Streaming Algorithm for -Coloring
Abstract
Every graph with maximum degree can be colored with (+1) colors using a simple greedy algorithm. Remarkably, recent work has shown that one can find such a coloring even in the semi-streaming model. But, in reality, one almost never needs (+1) colors to properly color a graph. Indeed, the celebrated ' theorem states that every (connected) graph beside cliques and odd cycles can be colored with colors. Can we find a -coloring in the semi-streaming model as well? We settle this key question in the affirmative by designing a randomized semi-streaming algorithm that given any graph, with high probability, either correctly declares that the graph is not -colorable or outputs a -coloring of the graph. The proof of this result starts with a detour. We first (provably) identify the extent to which the previous approaches for streaming coloring fail for -coloring: for instance, all these approaches can handle streams with repeated edges and they can run in o(n2) time -- we prove that neither of these tasks is possible for -coloring. These impossibility results however pinpoint exactly what is missing from prior approaches when it comes to -coloring. We then build on these insights to design a semi-streaming algorithm that uses (i) a novel sparse-recovery approach based on sparse-dense decompositions to (partially) recover the "problematic" subgraphs of the input -- the ones that form the basis of our impossibility results -- and (ii) a new coloring approach for these subgraphs that allows for recoloring of other vertices in a controlled way without relying on local explorations or finding "augmenting paths" that are generally impossible for semi-streaming algorithms. We believe both these techniques can be of independent interest.
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