Markov chain Monte Carlo (MCMC) allows statisticians to sample from a wide variety of multidimensional probability distributions. Unfortunately, MCMC is often difficult to use when components of the target distribution are highly correlated or have disparate variances. This thesis presents three results that attempt to address this problem. First, it demonstrates a means for graphical comparison of MCMC methods, which allows researchers to compare the behavior of a variety of samplers on a variety of distributions. Second, it presents a collection of new slice-sampling MCMC methods. These methods either adapt globally or use the adaptive crumb framework for sampling with multivariate steps. They perform well with minimal tuning on distribut...
Probabilistic models are conceptually powerful tools for finding structure in data, but their practi...
We propose a new class of Markov chain Monte Carlo methods, called $k$-polar slice sampling ($k$-PSS...
Monte Carlo methods have become essential tools to solve complex Bayesian inference problems in diff...
Markov chain Monte Carlo (MCMC) allows statisticians to sample from a wide variety of multidimension...
<div><p>Markov chain Monte Carlo (MCMC) algorithms offer a very general approach for sampling from a...
We describe two slice sampling methods for taking multivariate steps using the crumb framework. Thes...
∗Signatures are on file in the Graduate School. Slice sampling provides an easily implemented method...
Markov chain sampling methods that adapt to characteristics of the distribution being sampled can be...
The thesis develops a new and generic Markov chain Monte Carlo sampling methodology, naming latent s...
The thesis develops a new and generic Markov chain Monte Carlo sampling methodology, naming latent s...
Markov chain sampling methods that adapt to characteristics of the distribution being sampled can be...
Abstract. Sampling from complex distributions is an important but challenging topic in scientific an...
<div><p>Sampling from complex distributions is an important but challenging topic in scientific and ...
This paper investigates the polar slice sampler, a particular type of the Markov chain Monte Carlo a...
This paper investigates the polar slice sampler, a particular type of the Markov chain Monte Carlo a...
Probabilistic models are conceptually powerful tools for finding structure in data, but their practi...
We propose a new class of Markov chain Monte Carlo methods, called $k$-polar slice sampling ($k$-PSS...
Monte Carlo methods have become essential tools to solve complex Bayesian inference problems in diff...
Markov chain Monte Carlo (MCMC) allows statisticians to sample from a wide variety of multidimension...
<div><p>Markov chain Monte Carlo (MCMC) algorithms offer a very general approach for sampling from a...
We describe two slice sampling methods for taking multivariate steps using the crumb framework. Thes...
∗Signatures are on file in the Graduate School. Slice sampling provides an easily implemented method...
Markov chain sampling methods that adapt to characteristics of the distribution being sampled can be...
The thesis develops a new and generic Markov chain Monte Carlo sampling methodology, naming latent s...
The thesis develops a new and generic Markov chain Monte Carlo sampling methodology, naming latent s...
Markov chain sampling methods that adapt to characteristics of the distribution being sampled can be...
Abstract. Sampling from complex distributions is an important but challenging topic in scientific an...
<div><p>Sampling from complex distributions is an important but challenging topic in scientific and ...
This paper investigates the polar slice sampler, a particular type of the Markov chain Monte Carlo a...
This paper investigates the polar slice sampler, a particular type of the Markov chain Monte Carlo a...
Probabilistic models are conceptually powerful tools for finding structure in data, but their practi...
We propose a new class of Markov chain Monte Carlo methods, called $k$-polar slice sampling ($k$-PSS...
Monte Carlo methods have become essential tools to solve complex Bayesian inference problems in diff...