Sublinear Distance Labeling
Stephen Alstrup, S{\o}ren Dahlgaard, Mathias B{\ae}k Tejs, Knudsen, Ely Porat

TL;DR
This paper introduces improved distance labeling schemes for graphs, achieving smaller label sizes for sparse graphs and approximate distances, advancing the efficiency of graph distance computations.
Contribution
It presents a new $D$-preserving distance labeling scheme with improved bounds, and develops smaller labels for sparse graphs and approximate distances, addressing open problems.
Findings
New $O(rac{n}{D} ext{log}^2 D)$ bit $D$-preserving scheme
First sublinear size labels for sparse graphs
Enhanced approximate $r$-additive labeling scheme
Abstract
A distance labeling scheme labels the nodes of a graph with binary strings such that, given the labels of any two nodes, one can determine the distance in the graph between the two nodes by looking only at the labels. A -preserving distance labeling scheme only returns precise distances between pairs of nodes that are at distance at least from each other. In this paper we consider distance labeling schemes for the classical case of unweighted graphs with both directed and undirected edges. We present a bit -preserving distance labeling scheme, improving the previous bound by Bollob\'as et. al. [SIAM J. Discrete Math. 2005]. We also give an almost matching lower bound of . With our -preserving distance labeling scheme as a building block, we additionally achieve the following results: 1. We present the first distance…
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