154 p.The Hamiltonian Monte Carlo (HMC) method has been recognized as a powerful sampling tool in computational statistics. In this thesis,we showthat performance ofHMCcan be dramatically improved by replacing Hamiltonians in theMetropolis test with modified Hamiltonians, and a complete momentum update with a partial momentum refreshment. The resulting generalized HMC importance sampler, whichwe called Mix & Match Hamiltonian Monte Carlo (MMHMC), arose as an extension of the Generalized Shadow Hybrid Monte Carlo (GSHMC) method, previously proposed for molecular simulation. The MMHMC method adapts GSHMC specifically to computational statistics and enriches it with new essential features: (i) the e icient algorithms for computation of modifie...
This paper surveys in detail the relations between numerical integration and the Hamiltonian (or hyb...
Bayesian statistics carries out inference about the unknown parameters in a statistical model using ...
In this paper we address the widely-experienced difficulty in tuning Hamiltonian-based Monte Carlo s...
The Hamiltonian Monte Carlo (HMC) method has been recognized as a powerful sampling tool in computat...
154 p.The Hamiltonian Monte Carlo (HMC) method has been recognized as a powerful sampling tool in co...
The Hamiltonian Monte Carlo (HMC) method has been recognized as a powerful sampling tool in computat...
Efficient sampling is the key to success of molecular simulation of complex physical systems. Still,...
Modified Hamiltonian Monte Carlo (MHMC) methods combine the ideas behind two popular sampling approa...
The modified Hamiltonian Monte Carlo (MHMC) methods, i.e., importance sampling methods that use modi...
Abstract: Bayesian techniques have been widely used in finite element model (FEM) updating. The attr...
This thesis investigates three approaches to improve the performance of the Hamiltonian Monte Carlo ...
Bayesian techniques have been widely used in finite element model (FEM) updating. The attraction of ...
In this dissertation we develop novel methods in two areas of advanced statistical computing. The fi...
In this paper we address the widely-experienced difficulty in tuning Hamiltonian-based Monte Carlo s...
Generating random samples from a prescribed distribution is one of the most important and challengin...
This paper surveys in detail the relations between numerical integration and the Hamiltonian (or hyb...
Bayesian statistics carries out inference about the unknown parameters in a statistical model using ...
In this paper we address the widely-experienced difficulty in tuning Hamiltonian-based Monte Carlo s...
The Hamiltonian Monte Carlo (HMC) method has been recognized as a powerful sampling tool in computat...
154 p.The Hamiltonian Monte Carlo (HMC) method has been recognized as a powerful sampling tool in co...
The Hamiltonian Monte Carlo (HMC) method has been recognized as a powerful sampling tool in computat...
Efficient sampling is the key to success of molecular simulation of complex physical systems. Still,...
Modified Hamiltonian Monte Carlo (MHMC) methods combine the ideas behind two popular sampling approa...
The modified Hamiltonian Monte Carlo (MHMC) methods, i.e., importance sampling methods that use modi...
Abstract: Bayesian techniques have been widely used in finite element model (FEM) updating. The attr...
This thesis investigates three approaches to improve the performance of the Hamiltonian Monte Carlo ...
Bayesian techniques have been widely used in finite element model (FEM) updating. The attraction of ...
In this dissertation we develop novel methods in two areas of advanced statistical computing. The fi...
In this paper we address the widely-experienced difficulty in tuning Hamiltonian-based Monte Carlo s...
Generating random samples from a prescribed distribution is one of the most important and challengin...
This paper surveys in detail the relations between numerical integration and the Hamiltonian (or hyb...
Bayesian statistics carries out inference about the unknown parameters in a statistical model using ...
In this paper we address the widely-experienced difficulty in tuning Hamiltonian-based Monte Carlo s...