Monte Carlo analysis is a statistical simulation method that is often used to assess and quantify the outcome variance in complex environmental fate and effects models. Total outcome variance of these models is a function of (1) the variance (uncertainty and/or variability) associated with each model input and (2) the sensitivity of the model outcome to changes in the inputs. To propagate variance through a model using Monte Carlo techniques, each variable must be assigned a probability distribution. The validity of these distributions directly influences the accuracy and reliability of the model outcome. To efficiently allocate resources for constructing distributions one should first identify the most influential set of variables in the m...
ABSTRACT: Uncertainty is important to appreciate in the outputs of complex and dynamic urban systems...
International audienceThis work is devoted to some recent developments in uncertainty analysis of en...
Expert judgment is frequently used to assess parameter values of quantitative management science mod...
When using a computer model to inform a decision, it is important to investigate any uncertainty in ...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Markov-reward models are often used to analyze the reliability and performability of computer system...
AbstractObjectivesProbabilistic uncertainty analysis is a common means of evaluating pharmacoeconomi...
Summary. In many areas of science and technology, mathematical models are built to simu-late complex...
The authors describe methods for modeling uncertainty in the specification of decision tree probabil...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Each sub-model has to be specified by a set of parameters, which are imperfectly known; it may also ...
Uncertainty of environmental concentrations is calculated with the regional multimedia exposure mode...
Suppose a scenario of interest can be represented as a series of events. A final result R may be vie...
Integrated assessment models (IAMs) offer a crucial support to decision-makers in climate policy mak...
This article considers Markov chain computational methods for incorporating uncertainty about the d...
ABSTRACT: Uncertainty is important to appreciate in the outputs of complex and dynamic urban systems...
International audienceThis work is devoted to some recent developments in uncertainty analysis of en...
Expert judgment is frequently used to assess parameter values of quantitative management science mod...
When using a computer model to inform a decision, it is important to investigate any uncertainty in ...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Markov-reward models are often used to analyze the reliability and performability of computer system...
AbstractObjectivesProbabilistic uncertainty analysis is a common means of evaluating pharmacoeconomi...
Summary. In many areas of science and technology, mathematical models are built to simu-late complex...
The authors describe methods for modeling uncertainty in the specification of decision tree probabil...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Each sub-model has to be specified by a set of parameters, which are imperfectly known; it may also ...
Uncertainty of environmental concentrations is calculated with the regional multimedia exposure mode...
Suppose a scenario of interest can be represented as a series of events. A final result R may be vie...
Integrated assessment models (IAMs) offer a crucial support to decision-makers in climate policy mak...
This article considers Markov chain computational methods for incorporating uncertainty about the d...
ABSTRACT: Uncertainty is important to appreciate in the outputs of complex and dynamic urban systems...
International audienceThis work is devoted to some recent developments in uncertainty analysis of en...
Expert judgment is frequently used to assess parameter values of quantitative management science mod...