DCDSROJun 7, 2021

Near-Optimal Dispersion on Arbitrary Anonymous Graphs

arXiv:2106.03943v12 citations
Originality Highly original
AI Analysis

This solves the dispersion problem efficiently for distributed robotics in anonymous networks, providing the first algorithm optimal in both time and memory for constant-degree graphs.

The paper tackles the problem of dispersing robots on anonymous graphs from multiple initial nodes, presenting a multi-source DFS algorithm that achieves dispersion in O(min{m, kΔ}) time with Θ(log(k+Δ)) bits per robot, matching the optimal bounds previously known only for single-source cases.

Given an undirected, anonymous, port-labeled graph of $n$ memory-less nodes, $m$ edges, and degree $Δ$, we consider the problem of dispersing $k\leq n$ robots (or tokens) positioned initially arbitrarily on one or more nodes of the graph to exactly $k$ different nodes of the graph, one on each node. The objective is to simultaneously minimize time to achieve dispersion and memory requirement at each robot. If all $k$ robots are positioned initially on a single node, depth first search (DFS) traversal solves this problem in $O(\min\{m,kΔ\})$ time with $Θ(\log(k+Δ))$ bits at each robot. However, if robots are positioned initially on multiple nodes, the best previously known algorithm solves this problem in $O(\min\{m,kΔ\}\cdot \log \ell)$ time storing $Θ(\log(k+Δ))$ bits at each robot, where $\ell\leq k/2$ is the number of multiplicity nodes in the initial configuration. In this paper, we present a novel multi-source DFS traversal algorithm solving this problem in $O(\min\{m,kΔ\})$ time with $Θ(\log(k+Δ))$ bits at each robot, improving the time bound of the best previously known algorithm by $O(\log \ell)$ and matching asymptotically the single-source DFS traversal bounds. This is the first algorithm for dispersion that is optimal in both time and memory in arbitrary anonymous graphs of constant degree, $Δ=O(1)$. Furthermore, the result holds in both synchronous and asynchronous settings.

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