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FOCS 1994

"Go With the Winners" Algorithms

Conference Paper Accepted Paper Algorithms and Complexity ยท Theoretical Computer Science

Abstract

We can view certain randomized optimization algorithms as rules for randomly moving a particle around in a state space; each state might correspond to a distinct solution to the optimization problem, or more generally, the state space might express some other structure underlying the optimization algorithm. In this setting, a general paradigm for designing heuristics is to run several simulations of the algorithm simultaneously, and every so often classify the particles as "doing well" or "doing badly", and move each particle that is "doing badly" to the position of one that is "doing well". In this paper, we give a rigorous analysis of such a "go with the winners" scheme in the concrete setting of searching for a deep leaf in a tree. There are two relevant parameters of the tree: its depth d, and another parameter /spl kappa/ which is a measure of the imbalance of the tree. We prove that the running time of the "go with the winners" scheme (to achieve 99% probability of success) is bounded by a polynomial in d and /spl kappa/. By contrast, the simple restart scheme: run several independent simulations and pick the deepest leaf encountered takes time exponential in /spl kappa/ and d in the worst-case. We also show that any algorithm that guarantees a constant probability of success must have worst case running time at least /spl kappa/d. >

Authors

Keywords

  • Simulated annealing
  • Polynomials
  • Analytical models
  • State-space methods
  • Algorithm design and analysis
  • Temperature
  • Statistics
  • Computer science
  • Concrete
  • Fractals
  • Optimization Algorithm
  • Random Number
  • Running Time
  • State Space
  • Proof Of Theorem
  • Tree Model
  • Broad-leaved
  • Particle Position
  • Random Choice
  • Group Of Particles
  • Complete Tree
  • Start Of Stage

Context

Venue
IEEE Symposium on Foundations of Computer Science
Archive span
1975-2025
Indexed papers
3809
Paper id
160288676914392000