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Self-Stabilizing Repeated Balls-into-Bins

20 January 2015
L. Becchetti
A. Clementi
Emanuele Natale
F. Pasquale
G. Posta
    LRM
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Abstract

We study the following synchronous process that we call "repeated balls-into-bins". The process is started by assigning nnn balls to nnn bins in an arbitrary way. In every subsequent round, from each non-empty bin one ball is chosen according to some fixed strategy (random, FIFO, etc), and re-assigned to one of the nnn bins uniformly at random. We define a configuration "legitimate" if its maximum load is O(log⁡n)\mathcal{O}(\log n)O(logn). We prove that, starting from any configuration, the process will converge to a legitimate configuration in linear time and then it will only take on legitimate configurations over a period of length bounded by any polynomial in nnn, with high probability (w.h.p.). This implies that the process is self-stabilizing and that every ball traverses all bins in O(nlog⁡2n)\mathcal{O}(n \log^2 n)O(nlog2n) rounds, w.h.p.

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