Monte Carlo simulation is a useful technique to propagate uncertainty through a quantitative model, but that is all. When the quantitative modelling is used to support decision-making, a Monte Carlo simulation must be complemented by a conceptual framework that assigns a meaningful interpretation of uncertainty in output. Depending on how the assessor or decision maker choose to perceive risk, the interpretation of uncertainty and the way uncertainty ought to be treated and assigned to input variables in a Monte Carlo simulation will differ. Bayesian Evidence Synthesis is a framework for model calibration and quantitative modelling which has originated from complex meta-analysis in medical decision-making that conceptually can frame a Monte...
Abstract Background Statistical inference based on small datasets, commonly found in precision oncol...
Quantitative risk assessments are an integral part of risk-informed regulation of current and future...
We present here a Bayesian framework of risk perception. This framework encompasses plausibility jud...
Decision-analytic models must often be informed using data that are only indirectly related to the m...
This paper compares Evidence Theory (ET) and Bayesian Theory (BT) for uncertainty modeling and decis...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
We discuss different aspects of farm-to-fork risk assessment from a modelling perspective. Stochasti...
Markov chain Monte Carlo (MCMC) approaches to sampling directly from the joint posterior distributio...
When we use simulation to estimate the performance of a stochastic system, the simulation often cont...
As policy makers require more rigorous assessments for the strength of evidence in Theory-Based eval...
Alongside the development of meta-analysis as a tool for summarizing research literature, there is r...
Purpose: Bayesian inference has become popular. It offers several pragmatic approaches to account fo...
Uncertainty refers to any limitation in knowledge. Identifying and characterizing uncertainty in con...
We consider the problem of performing Bayesian inference in probabilistic models where observations ...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
Abstract Background Statistical inference based on small datasets, commonly found in precision oncol...
Quantitative risk assessments are an integral part of risk-informed regulation of current and future...
We present here a Bayesian framework of risk perception. This framework encompasses plausibility jud...
Decision-analytic models must often be informed using data that are only indirectly related to the m...
This paper compares Evidence Theory (ET) and Bayesian Theory (BT) for uncertainty modeling and decis...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
We discuss different aspects of farm-to-fork risk assessment from a modelling perspective. Stochasti...
Markov chain Monte Carlo (MCMC) approaches to sampling directly from the joint posterior distributio...
When we use simulation to estimate the performance of a stochastic system, the simulation often cont...
As policy makers require more rigorous assessments for the strength of evidence in Theory-Based eval...
Alongside the development of meta-analysis as a tool for summarizing research literature, there is r...
Purpose: Bayesian inference has become popular. It offers several pragmatic approaches to account fo...
Uncertainty refers to any limitation in knowledge. Identifying and characterizing uncertainty in con...
We consider the problem of performing Bayesian inference in probabilistic models where observations ...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
Abstract Background Statistical inference based on small datasets, commonly found in precision oncol...
Quantitative risk assessments are an integral part of risk-informed regulation of current and future...
We present here a Bayesian framework of risk perception. This framework encompasses plausibility jud...