Research in computational statistics develops numerically efficient methods to estimate statistical models, with Monte Carlo algorithms a subset of such methods. This thesis develops novel Monte Carlo methods to solve three important problems in Bayesian statistics. For many complex models, it is prohibitively expensive to run simulation methods such as Markov chain Monte Carlo (MCMC) on the model directly when the likelihood function includes an intractable term or is computationally challenging in some other way. The first two topics investigate models having such likelihoods. The third topic proposes a novel model to solve a popular question in causal inference, which requires solving a computationally challenging problem. The first...
Cette thèse présente différentes contributions aux méthodes de Monte Carlo utilisées en statistique...
Emerging many-core computer architectures provide an incentive for computational methods to exhibit ...
Estimating parameters of complex statistical models and their uncertainty from data is a challenging...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
This book has a very large scope in that, beyond its title, it covers the dual fields of computation...
This thesis presents the development of a new numerical algorithm for statistical inference problems...
constitutes a class of computational methods rooted in Bayesian statistics. In all model-based stati...
This paperback edition is a reprint of the 2001 Springer edition This book provides a self-contained...
Each of the three chapters included here attempts to meet a different computing challenge that prese...
In this dissertation we apply computational Bayesian methods to three distinct problems. In the firs...
This textbook on statistical modeling and statistical inference will assist advanced undergraduate a...
This doctoral thesis in computational statistics utilizes both Monte Carlo methods(approximate Bayes...
An explosive advance of numerical analysis techniques in recent years has paralleled the rapid incre...
Monte Carlo methods are becoming more and more popular in statistics due to the fast development of ...
This is a chapter for the book "Bayesian Methods and Expert Elicitation" edited by Klaus Bocker, 23 ...
Cette thèse présente différentes contributions aux méthodes de Monte Carlo utilisées en statistique...
Emerging many-core computer architectures provide an incentive for computational methods to exhibit ...
Estimating parameters of complex statistical models and their uncertainty from data is a challenging...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
This book has a very large scope in that, beyond its title, it covers the dual fields of computation...
This thesis presents the development of a new numerical algorithm for statistical inference problems...
constitutes a class of computational methods rooted in Bayesian statistics. In all model-based stati...
This paperback edition is a reprint of the 2001 Springer edition This book provides a self-contained...
Each of the three chapters included here attempts to meet a different computing challenge that prese...
In this dissertation we apply computational Bayesian methods to three distinct problems. In the firs...
This textbook on statistical modeling and statistical inference will assist advanced undergraduate a...
This doctoral thesis in computational statistics utilizes both Monte Carlo methods(approximate Bayes...
An explosive advance of numerical analysis techniques in recent years has paralleled the rapid incre...
Monte Carlo methods are becoming more and more popular in statistics due to the fast development of ...
This is a chapter for the book "Bayesian Methods and Expert Elicitation" edited by Klaus Bocker, 23 ...
Cette thèse présente différentes contributions aux méthodes de Monte Carlo utilisées en statistique...
Emerging many-core computer architectures provide an incentive for computational methods to exhibit ...
Estimating parameters of complex statistical models and their uncertainty from data is a challenging...