Statistical mechanics bridges the fields of physics and probability theory, providing critical insights into both disciplines. Statistical physics models capture key features of macroscopic phenomena and consist of a set of configurations satisfying various constraints. Markov chain Monte Carlo algorithms are often used to sample from distributions over the exponentially large state space of these models to gain insight about the system and estimate its thermodynamic properties. Similar problems arise throughout machine learning, optimization, and counting complexity. In this dissertation, we present several new techniques based on random walks for analyzing sampling algorithms and the dynamics of various lattice models from statistical phy...
In this thesis we study the mixing times of Markov chains, e.g., therate of convergence of Markov ch...
The random-cluster (FK) model is a key tool for the study of phase transitions and for the design of...
Graduation date: 2018Markov chains have long been used to sample from probability distributions and ...
The six-vertex model in statistical physics is a weighted generalization of the ice model on Z^2 (i....
Markov chains are an essential tool for sampling from large sets, and are ubiquitous across many sci...
The fields of statistical physics, discrete probability, combinatorics, and theoretical computer sci...
Algorithms based on Markov chains are ubiquitous across scientific disciplines, as they provide a me...
Spin systems, or undirected graphical models, are important tools for modeling joint distributions o...
In this paper, we study the mixing time of two widely used Markov chain algorithms for the six-verte...
In this work we provide several improvements in the study of phase transitions of interacting parti...
Spin systems are powerful mathematical models widely used and studied in Statistical Physics and Com...
The random-cluster model is a unifying framework for studying random graphs, spin systems and electr...
Nonequilibrium systems can undergo continuous phase transitions between different steady states. The...
Markov chains are algorithms that can provide critical information from exponentially large sets eff...
This thesis deals with some aspects of the physics of disordered systems. It consists of four papers...
In this thesis we study the mixing times of Markov chains, e.g., therate of convergence of Markov ch...
The random-cluster (FK) model is a key tool for the study of phase transitions and for the design of...
Graduation date: 2018Markov chains have long been used to sample from probability distributions and ...
The six-vertex model in statistical physics is a weighted generalization of the ice model on Z^2 (i....
Markov chains are an essential tool for sampling from large sets, and are ubiquitous across many sci...
The fields of statistical physics, discrete probability, combinatorics, and theoretical computer sci...
Algorithms based on Markov chains are ubiquitous across scientific disciplines, as they provide a me...
Spin systems, or undirected graphical models, are important tools for modeling joint distributions o...
In this paper, we study the mixing time of two widely used Markov chain algorithms for the six-verte...
In this work we provide several improvements in the study of phase transitions of interacting parti...
Spin systems are powerful mathematical models widely used and studied in Statistical Physics and Com...
The random-cluster model is a unifying framework for studying random graphs, spin systems and electr...
Nonequilibrium systems can undergo continuous phase transitions between different steady states. The...
Markov chains are algorithms that can provide critical information from exponentially large sets eff...
This thesis deals with some aspects of the physics of disordered systems. It consists of four papers...
In this thesis we study the mixing times of Markov chains, e.g., therate of convergence of Markov ch...
The random-cluster (FK) model is a key tool for the study of phase transitions and for the design of...
Graduation date: 2018Markov chains have long been used to sample from probability distributions and ...