Title
Estimating extreme probabilities using tail simulated data
Abstract
The paper presents a powerful method for estimating extreme probabilities of a target variable Z = h(X) which is a monotone function of a set of basic variables X = X1,…, Xn). To this aim, a sample of (X1,…, Xn) is simulated in such a way that the corresponding values of Z are in the corresponding tail, and used to fit a Pareto distribution to the associated exceedances. For cases where this method is difficult to apply, an alternative method is proposed, which leads to a low rejection proportion of sample values, when compared with the Monte Carlo method. Both methods are shown to be very useful for sensitivity analysis in Bayesian networks or uncertainty in risk analysis, when very large confidence intervals for the marginal/conditional probabilities are required. The methods are illustrated with several examples, and one example of application to a real case is used to illustrate the whole process.
Year
DOI
Venue
1997
10.1016/S0888-613X(97)00011-X
International Journal of Approximate Reasoning
Keywords
Field
DocType
Bayesian networks,generalized Pareto distribution,simulation,stratified simulation,tails
Applied mathematics,Discrete mathematics,Pareto interpolation,Monte Carlo method,Conditional probability,Pareto distribution,Bayesian network,Generalized Pareto distribution,Chain rule (probability),Statistics,Confidence interval,Mathematics
Journal
Volume
Issue
ISSN
17
2-3
0888-613X
Citations 
PageRank 
References 
2
0.81
7
Authors
3
Name
Order
Citations
PageRank
Enrique Castillo155559.86
Cristina Solares2467.89
Patricia Gómez382.15