Push-Down Trees: Optimal Self-Adjusting Complete Trees

Push-Down Trees: Optimal Self-Adjusting Complete Trees

Abstract

This paper studies a fundamental algorithmic problem related to the design of demand-aware networks: networks whose topologies adjust toward the traffic patterns they serve, in an online manner. The goal is to strike a tradeoff between the benefits of such adjustments (shorter routes) and their costs (reconfigurations). In particular, we consider the problem of designing a self-adjusting tree network which serves singlesource, multi-destination communication. The problem is a central building block for more general self-adjusting network designs and has interesting connections to self-adjusting datastructures. We present two constant-competitive online algorithms for this problem, one randomized and one deterministic. Our approach is based on a natural notion of Most Recently Used (MRU) tree, maintaining a working set. We prove that the working set is a cost lower bound for any online algorithm, and then present a randomized algorithm RANDOM-PUSH which approximates such an MRU tree at low cost, by pushing less recently used communication partners down the tree, along a random walk. Our deterministic algorithm MOVE-HALF does not directly maintain an MRU tree, but its cost is still proportional to the cost of an MRU tree, and also matches the working set lower bound.

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Authors
  • Avin, Chen
  • Mondal, Kaushik
  • Schmid, Stefan
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Supplemental Material
Shortfacts
Category
Journal Paper
Divisions
Communication Technologies
Subjects
Informatik Allgemeines
Journal or Publication Title
IEEE/ACM Transactions on Networking
ISSN
1063-6692
Date
2022
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