Summary. In many areas of science and technology, mathematical models are built to simu-late complex real world phenomena. Such models are typically implemented in large computer programs and are also very complex, such that the way that the model responds to changes in its inputs is not transparent. Sensitivity analysis is concerned with understanding how changes in the model inputs influence the outputs.This may be motivated simply by a wish to understand the implications of a complex model but often arises because there is uncertainty about the true values of the inputs that should be used for a particular application. A broad range of mea-sures have been advocated in the literature to quantify and describe the sensitivity of a model’s o...
This paper describes an approach to Bayesian sensitivity analysis that uses an influence statistic a...
Computer experiments are becoming increasingly important in scientific investigations. In the presen...
The process of building a Bayesian network model is often a bottleneck in applying the Bayesian netw...
SIGLEAvailable from British Library Document Supply Centre-DSC:7769.086(no 525/02) / BLDSC - British...
Sensitivity analysis is a general technique for investigating the robustness of the output of a math...
Existing guidelines for impact assessment recommend that mathematical modelling of real or man-made ...
To study the effects of inaccuracies in the parameter probabilities of a Bayesian network, often a s...
When using a computer model to inform a decision, it is important to investigate any uncertainty in ...
Markov-reward models are often used to analyze the reliability and performability of computer system...
ABSTRACTObjectiveTo give guidance in defining probability distributions for model inputs in probabil...
Within the discipline of uncertainty analysis in structural dynamics, a large open problem is concer...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Probabilistic sensitivity analysis has previously been described for the special case of dichotomous...
We examine situations where interest lies in the conditional association between outcome and exposur...
Summary: We examine situations where interest lies in the conditional association between out-come a...
This paper describes an approach to Bayesian sensitivity analysis that uses an influence statistic a...
Computer experiments are becoming increasingly important in scientific investigations. In the presen...
The process of building a Bayesian network model is often a bottleneck in applying the Bayesian netw...
SIGLEAvailable from British Library Document Supply Centre-DSC:7769.086(no 525/02) / BLDSC - British...
Sensitivity analysis is a general technique for investigating the robustness of the output of a math...
Existing guidelines for impact assessment recommend that mathematical modelling of real or man-made ...
To study the effects of inaccuracies in the parameter probabilities of a Bayesian network, often a s...
When using a computer model to inform a decision, it is important to investigate any uncertainty in ...
Markov-reward models are often used to analyze the reliability and performability of computer system...
ABSTRACTObjectiveTo give guidance in defining probability distributions for model inputs in probabil...
Within the discipline of uncertainty analysis in structural dynamics, a large open problem is concer...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Probabilistic sensitivity analysis has previously been described for the special case of dichotomous...
We examine situations where interest lies in the conditional association between outcome and exposur...
Summary: We examine situations where interest lies in the conditional association between out-come a...
This paper describes an approach to Bayesian sensitivity analysis that uses an influence statistic a...
Computer experiments are becoming increasingly important in scientific investigations. In the presen...
The process of building a Bayesian network model is often a bottleneck in applying the Bayesian netw...