AbstractThe paper studies effective approximate solutions to combinatorial counting and unform generation problems. Using a technique based on the simulation of ergodic Markov chains, it is shown that, for self-reducible structures, almost uniform generation is possible in polynomial time provided only that randomised approximate counting to within some arbitrary polynomial factor is possible in polynomial time. It follows that, for self-reducible structures, polynomial time randomised algorithms for counting to within factors of the form (1 + n−β) are available either for all β ϵ R or for no β ϵ R. A substantial part of the paper is devoted to investigating the rate of convergence of finite ergodic Markov chains, and a simple but powerful ...
We give a RNC algorithm to sample matchings from a distribution on the set of matchings in a graph. ...
In 1999 Kannan, Tetali and Vempala proposed a MCMCmethod to uniformly sample all possible realizatio...
In the first part of this work, we present an RNC uniform generator of matchings of any size in a gr...
The paper studies effective approximate solutions to combinatorial counting and uniform generation p...
AbstractThe paper studies effective approximate solutions to combinatorial counting and unform gener...
AbstractThe class of problems involving the random generation of combinatorial structures from a uni...
This monograph studies two classical computational problems: counting the elements of a finite set o...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
AbstractThe class of problems involving the random generation of combinatorial structures from a uni...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
In 1999 Kannan, Tetali and Vempala proposed a MCMC method to uniformly sample all possible realizati...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
We consider approximate counting of colourings of an n-vertex graph using rapidly mixing Markov chai...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
We give a RNC algorithm to sample matchings from a distribution on the set of matchings in a graph. ...
In 1999 Kannan, Tetali and Vempala proposed a MCMCmethod to uniformly sample all possible realizatio...
In the first part of this work, we present an RNC uniform generator of matchings of any size in a gr...
The paper studies effective approximate solutions to combinatorial counting and uniform generation p...
AbstractThe paper studies effective approximate solutions to combinatorial counting and unform gener...
AbstractThe class of problems involving the random generation of combinatorial structures from a uni...
This monograph studies two classical computational problems: counting the elements of a finite set o...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
AbstractThe class of problems involving the random generation of combinatorial structures from a uni...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
In 1999 Kannan, Tetali and Vempala proposed a MCMC method to uniformly sample all possible realizati...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
We consider approximate counting of colourings of an n-vertex graph using rapidly mixing Markov chai...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
In this work we look into the parallelization (in the NC sense) of the Markov Chain approach to almo...
We give a RNC algorithm to sample matchings from a distribution on the set of matchings in a graph. ...
In 1999 Kannan, Tetali and Vempala proposed a MCMCmethod to uniformly sample all possible realizatio...
In the first part of this work, we present an RNC uniform generator of matchings of any size in a gr...