Partial expected value of perfect information (EVPI) quantifies the value of removing uncertainty about unknown parameters in a decision model. EVPIs can be computed via Monte Carlo methods. An outer loop samples values of the parameters of interest, and an inner loop samples the remaining parameters from their conditional distribution. This nested Monte Carlo approach can result in biased estimates if small numbers of inner samples are used and can require a large number of model runs for accurate partial EVPI estimates. We present a simple algorithm to estimate the EVPI bias and confidence interval width for a specified number of inner and outer samples. The algorithm uses a relatively small number of model runs (we suggest approximately ...
The Expected Value of Perfect Partial Information (EVPPI) is a decision-theoretic measure of the ‘co...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Background: Uncertainty in parameters is present in many risk assessment and decision making problem...
Partial expected value of perfect information (EVPI) calculations can quantify the value of learning...
Expected value of information methods evaluate the potential health benefits that can be obtained fr...
In this paper, we develop a very efficient approach to the Monte Carlo estimation of the expected va...
We describe a novel process for transforming the efficiency of partial expected value of sample info...
The expected value of partial perfect information (EVPPI) provides an upper bound on the value of co...
The expected value of partial perfect information (EVPPI) provides an upper boundon the value of col...
Background. Investing efficiently in future research to improve policy decisions is an important goa...
Background Value of information analysis provides a framework for the analysis of uncertainty withi...
Investing efficiently in future research to improve policy decisions is an important goal. Expected ...
Background. Conventional estimators for the expected value of sample information (EVSI) are computat...
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...
The Expected Value of Perfect Partial Information (EVPPI) is a decision-theoretic measure of the ‘co...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Background: Uncertainty in parameters is present in many risk assessment and decision making problem...
Partial expected value of perfect information (EVPI) calculations can quantify the value of learning...
Expected value of information methods evaluate the potential health benefits that can be obtained fr...
In this paper, we develop a very efficient approach to the Monte Carlo estimation of the expected va...
We describe a novel process for transforming the efficiency of partial expected value of sample info...
The expected value of partial perfect information (EVPPI) provides an upper bound on the value of co...
The expected value of partial perfect information (EVPPI) provides an upper boundon the value of col...
Background. Investing efficiently in future research to improve policy decisions is an important goa...
Background Value of information analysis provides a framework for the analysis of uncertainty withi...
Investing efficiently in future research to improve policy decisions is an important goal. Expected ...
Background. Conventional estimators for the expected value of sample information (EVSI) are computat...
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...
The Expected Value of Perfect Partial Information (EVPPI) is a decision-theoretic measure of the ‘co...
Health economic decision-analytic models are used to estimate the expected net benefits of competing...
Background: Uncertainty in parameters is present in many risk assessment and decision making problem...