Markov chain Monte Carlo (MCMC) approaches to sampling directly from the joint posterior distribution of aleatory model parameters have led to tremendous advances in Bayesian inference capability in a wide variety of fields, including probabilistic risk analysis. The advent of freely available software coupled with inexpensive computing power has catalyzed this advance. This paper examines where the risk assessment community is with respect to implementing modern computational-based Bayesian approaches to inference. Through a series of examples in different topical areas, it introduces salient concepts and illustrates the practical application of Bayesian inference via MCMC sampling to a variety of important problems
Bayesian inference often requires integrating some function with respect to a posterior distribution...
Monte Carlo simulation is a useful technique to propagate uncertainty through a quantitative model, ...
Abstract — In risk analysis, Bayesian methods are more adaptability and flexibility than traditional...
Markov chain Monte Carlo (MCMC) approaches to sampling directly from the joint posterior distributio...
This paper reviews the way statisticians use Markov Chain Monte Carlo (MCMC) methods. These techniq...
The recent proliferation of Markov chain Monte Carlo (MCMC) approaches has led to the use of the Bay...
While Robert and Rousseau (2010) addressed the foundational aspects of Bayesian analysis, the curren...
While modern machine learning and deep learning seem to dominate the areas where scalability and mod...
Purpose: Bayesian inference has become popular. It offers several pragmatic approaches to account fo...
For half a century computational scientists have been numerically simulating complex systems. Uncert...
The Markov Chain Monte-Carlo (MCMC) born in early 1950s has recently aroused great interest among s...
These notes provide an introduction to Markov chain Monte Carlo methods that are useful in both Baye...
This chapter provides a overview of Bayesian inference, mostly emphasising that it is a universal me...
This chapter reviews the recent developments in Markov chain Monte Carlo simulation methods. These m...
Bayesian paradigm offers a conceptually simple and coherent system of statistical inference based on...
Bayesian inference often requires integrating some function with respect to a posterior distribution...
Monte Carlo simulation is a useful technique to propagate uncertainty through a quantitative model, ...
Abstract — In risk analysis, Bayesian methods are more adaptability and flexibility than traditional...
Markov chain Monte Carlo (MCMC) approaches to sampling directly from the joint posterior distributio...
This paper reviews the way statisticians use Markov Chain Monte Carlo (MCMC) methods. These techniq...
The recent proliferation of Markov chain Monte Carlo (MCMC) approaches has led to the use of the Bay...
While Robert and Rousseau (2010) addressed the foundational aspects of Bayesian analysis, the curren...
While modern machine learning and deep learning seem to dominate the areas where scalability and mod...
Purpose: Bayesian inference has become popular. It offers several pragmatic approaches to account fo...
For half a century computational scientists have been numerically simulating complex systems. Uncert...
The Markov Chain Monte-Carlo (MCMC) born in early 1950s has recently aroused great interest among s...
These notes provide an introduction to Markov chain Monte Carlo methods that are useful in both Baye...
This chapter provides a overview of Bayesian inference, mostly emphasising that it is a universal me...
This chapter reviews the recent developments in Markov chain Monte Carlo simulation methods. These m...
Bayesian paradigm offers a conceptually simple and coherent system of statistical inference based on...
Bayesian inference often requires integrating some function with respect to a posterior distribution...
Monte Carlo simulation is a useful technique to propagate uncertainty through a quantitative model, ...
Abstract — In risk analysis, Bayesian methods are more adaptability and flexibility than traditional...