Optimal Distance Labeling Schemes for Trees
Ofer Freedman, Pawe{\l} Gawrychowski, Patrick K. Nicholson, and Oren, Weimann

TL;DR
This paper establishes optimal bounds for distance labeling schemes in trees, surpassing previous universal tree-based bounds, and explores bounds for bounded-distance and approximate-distance labeling schemes.
Contribution
It introduces a new distance labeling scheme for trees that breaks the longstanding universal tree lower bound and provides bounds for bounded and approximate distances.
Findings
Optimal distance labeling size of $1/4\log^2n+o(\log^2n)$ matches lower bounds.
First scheme to beat the universal tree lower bound, showing a separation.
Provides bounds for bounded and approximate distance labeling schemes.
Abstract
Labeling schemes seek to assign a short label to each node in a network, so that a function on two nodes can be computed by examining their labels alone. For the particular case of trees, optimal bounds (up to low order terms) were recently obtained for adjacency labeling [FOCS'15], nearest common ancestor labeling [SODA'14], and ancestry labeling [SICOMP'06]. In this paper we obtain optimal bounds for distance labeling. We present labels of size , matching (up to low order terms) the recent lower bound [ICALP'16]. Prior to our work, all distance labeling schemes for trees could be reinterpreted as universal trees. A tree is said to be universal if any tree on nodes can be found as a subtree of . A universal tree with nodes implies a distance labeling scheme with label size . In 1981, Chung et al. proved that any…
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