Algorithms based on Markov chains are ubiquitous across scientific disciplines, as they provide a method for extracting statistical information about large, complicated systems. Although these algorithms may be applied to arbitrary graphs, many physical applications are more naturally studied under the restriction to regular lattices. We study several local Markov chains on lattices, exploring how small changes to some parameters can greatly influence efficiency of the algorithms. We begin by examining a natural Markov Chain that arises in the context of "monotonic surfaces", where some point on a surface is sightly raised or lowered each step, but with a greater rate of raising than lowering. We show that this chain is rapidly mixing (...
We consider the well-studied problem of uniformly sampling (bipartite) graphs with a given degree se...
Markov Chain Monte Carlo algorithms are often used to sample combinatorial structures such as match...
International audienceWe investigate under which conditions a higher-order Markov chain, or more gen...
Markov chains are algorithms that can provide critical information from exponentially large sets eff...
Markov chains are an essential tool for sampling from large sets, and are ubiquitous across many sci...
Graduation date: 2018Markov chains have long been used to sample from probability distributions and ...
The fields of statistical physics, discrete probability, combinatorics, and theoretical computer sci...
Many physical models undergo phase transitions as some parameter of the system is varied. This pheno...
A variety of paradigms have been proposed to speed up Markov chain mixing, ranging from non-backtrac...
Presented as part of the ARC11 lecture on October 30, 2017 at 10:00 a.m. in the Klaus Advanced Compu...
Markov Chain Monte Carlo algorithms are often used to sample combinatorial structures such as matchi...
Many local Markov chains based on Glauber dynamics are known to undergo a phase transition as a para...
AbstractAlgorithms based on Markov chains are ubiquitous across scientific disciplines as they provi...
Statistical mechanics bridges the fields of physics and probability theory, providing critical insig...
The theory of rapid mixing random walks plays a fundamental role in the study of modern randomised a...
We consider the well-studied problem of uniformly sampling (bipartite) graphs with a given degree se...
Markov Chain Monte Carlo algorithms are often used to sample combinatorial structures such as match...
International audienceWe investigate under which conditions a higher-order Markov chain, or more gen...
Markov chains are algorithms that can provide critical information from exponentially large sets eff...
Markov chains are an essential tool for sampling from large sets, and are ubiquitous across many sci...
Graduation date: 2018Markov chains have long been used to sample from probability distributions and ...
The fields of statistical physics, discrete probability, combinatorics, and theoretical computer sci...
Many physical models undergo phase transitions as some parameter of the system is varied. This pheno...
A variety of paradigms have been proposed to speed up Markov chain mixing, ranging from non-backtrac...
Presented as part of the ARC11 lecture on October 30, 2017 at 10:00 a.m. in the Klaus Advanced Compu...
Markov Chain Monte Carlo algorithms are often used to sample combinatorial structures such as matchi...
Many local Markov chains based on Glauber dynamics are known to undergo a phase transition as a para...
AbstractAlgorithms based on Markov chains are ubiquitous across scientific disciplines as they provi...
Statistical mechanics bridges the fields of physics and probability theory, providing critical insig...
The theory of rapid mixing random walks plays a fundamental role in the study of modern randomised a...
We consider the well-studied problem of uniformly sampling (bipartite) graphs with a given degree se...
Markov Chain Monte Carlo algorithms are often used to sample combinatorial structures such as match...
International audienceWe investigate under which conditions a higher-order Markov chain, or more gen...