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Quantum Complexity of Weighted Diameter and Radius in CONGEST Networks

6 June 2022
Xudong Wu
Penghui Yao
    MQ
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Abstract

This paper studies the round complexity of computing the weighted diameter and radius of a graph in the quantum CONGEST model. We present a quantum algorithm that (1+o(1))(1+o(1))(1+o(1))-approximates the diameter and radius with round complexity O~(min⁡{n9/10D3/10,n})\widetilde O\left(\min\left\{n^{9/10}D^{3/10},n\right\}\right)O(min{n9/10D3/10,n}), where DDD denotes the unweighted diameter. This exhibits the advantages of quantum communication over classical communication since computing a (3/2−ε)(3/2-\varepsilon)(3/2−ε)-approximation of the diameter and radius in a classical CONGEST network takes Ω~(n)\widetilde\Omega(n)Ω(n) rounds, even if DDD is constant [Abboud, Censor-Hillel, and Khoury, DISC '16]. We also prove a lower bound of Ω~(n2/3)\widetilde\Omega(n^{2/3})Ω(n2/3) for (3/2−ε)(3/2-\varepsilon)(3/2−ε)-approximating the weighted diameter/radius in quantum CONGEST networks, even if D=Θ(log⁡n)D=\Theta(\log n)D=Θ(logn). Thus, in quantum CONGEST networks, computing weighted diameter and weighted radius of graphs with small DDD is strictly harder than unweighted ones due to Le Gall and Magniez's O~(nD)\widetilde O\left(\sqrt{nD}\right)O(nD​)-round algorithm for unweighted diameter/radius [PODC '18].

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