• Letter

Universal performance bounds of restart

Dmitry Starkov and Sergey Belan
Phys. Rev. E 107, L062101 – Published 5 June 2023
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Abstract

As has long been known to computer scientists, the performance of probabilistic algorithms characterized by relatively large runtime fluctuations can be improved by applying a restart, i.e., episodic interruption of a randomized computational procedure followed by initialization of its new statistically independent realization. A similar effect of restart-induced process acceleration could potentially be possible in the context of enzymatic reactions, where dissociation of the enzyme-substrate intermediate corresponds to restarting the catalytic step of the reaction. To date, a significant number of analytical results have been obtained in physics and computer science regarding the effect of restart on the completion time statistics in various model problems, however, the fundamental limits of restart efficiency remain unknown. Here we derive a range of universal statistical inequalities that offer constraints on the effect that restart could impose on the completion time of a generic stochastic process. The corresponding bounds are expressed via simple statistical metrics of the original process such as harmonic mean h, median value m, and mode M, and, thus, are remarkably practical. We test our analytical predictions with multiple numerical examples, discuss implications arising from them and important avenues of future work.

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  • Received 13 December 2022
  • Accepted 11 May 2023

DOI:https://doi.org/10.1103/PhysRevE.107.L062101

©2023 American Physical Society

Physics Subject Headings (PhySH)

Statistical Physics & ThermodynamicsInterdisciplinary Physics

Authors & Affiliations

Dmitry Starkov1,2 and Sergey Belan1,3,*

  • 1Landau Institute for Theoretical Physics, Russian Academy of Sciences, 1-A Akademika Semenova Av., 142432 Chernogolovka, Russia
  • 2National Research University Higher School of Economics, Faculty of Mathematics, Usacheva 6, 119048 Moscow, Russia
  • 3National Research University Higher School of Economics, Faculty of Physics, Myasnitskaya 20, 101000 Moscow, Russia

  • *sergb27@yandex.ru

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Issue

Vol. 107, Iss. 6 — June 2023

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