We describe a novel process for transforming the efficiency of partial expected value of sample information (EVSI) computation in decision models. Traditional EVSI computation begins with Monte Carlo sampling to produce new simulated data-sets with a specified sample size. Each data-set is synthesised with prior information to give posterior distributions for model parameters, either via analytic formulae or a further Markov Chain Monte Carlo (MCMC) simulation. A further ’inner level’ Monte Carlo sampling then quantifies the effect of the simulated data on the decision. This paper describes a novel form of Bayesian Laplace approximation, which can be replace both the Bayesian updating and the inner Monte Carlo sampling to compute the poster...
We study Monte Carlo estimation of the expected value of sample information (EVSI), which measures t...
Value of Information measures quantify the economic benefit of obtaining additional information abou...
Purpose: Bayesian inference has become popular. It offers several pragmatic approaches to account fo...
This thesis is concerned with computation of expected value of information (EVI). The topic is impor...
Expected value of sample information (EVSI) involves simulating data collection, Bayesian updating, ...
Expected value of information methods evaluate the potential health benefits that can be obtained fr...
Partial expected value of perfect information (EVPI) calculations can quantify the value of learning...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Background. Investing efficiently in future research to improve policy decisions is an important goa...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Partial expected value of perfect information (EVPI) quantifies the value of removing uncertainty ab...
The expected value of partial perfect information (EVPPI) provides an upper bound on the value of co...
Background. Conventional estimators for the expected value of sample information (EVSI) are computat...
In this paper, we develop a very efficient approach to the Monte Carlo estimation of the expected va...
We study Monte Carlo estimation of the expected value of sample information (EVSI), which measures t...
Value of Information measures quantify the economic benefit of obtaining additional information abou...
Purpose: Bayesian inference has become popular. It offers several pragmatic approaches to account fo...
This thesis is concerned with computation of expected value of information (EVI). The topic is impor...
Expected value of sample information (EVSI) involves simulating data collection, Bayesian updating, ...
Expected value of information methods evaluate the potential health benefits that can be obtained fr...
Partial expected value of perfect information (EVPI) calculations can quantify the value of learning...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Background. Investing efficiently in future research to improve policy decisions is an important goa...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Partial expected value of perfect information (EVPI) quantifies the value of removing uncertainty ab...
The expected value of partial perfect information (EVPPI) provides an upper bound on the value of co...
Background. Conventional estimators for the expected value of sample information (EVSI) are computat...
In this paper, we develop a very efficient approach to the Monte Carlo estimation of the expected va...
We study Monte Carlo estimation of the expected value of sample information (EVSI), which measures t...
Value of Information measures quantify the economic benefit of obtaining additional information abou...
Purpose: Bayesian inference has become popular. It offers several pragmatic approaches to account fo...