Efficient simulation of tail probabilities of sums of correlated lognormals

被引:0
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作者
Søren Asmussen
José Blanchet
Sandeep Juneja
Leonardo Rojas-Nandayapa
机构
[1] University of Aarhus,Department of Mathematical Sciences
[2] Columbia University,Department of IEOR
[3] Tata Institute of Fundamental Research,School of Technology and Computer Sciences
来源
Annals of Operations Research | 2011年 / 189卷
关键词
Black-Scholes model; Correlated lognormals; Importance sampling; Cross-entropy method; Efficiency; Rare-event simulation; Vanishing relative error;
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摘要
We consider the problem of efficient estimation of tail probabilities of sums of correlated lognormals via simulation. This problem is motivated by the tail analysis of portfolios of assets driven by correlated Black-Scholes models. We propose two estimators that can be rigorously shown to be efficient as the tail probability of interest decreases to zero. The first estimator, based on importance sampling, involves a scaling of the whole covariance matrix and can be shown to be asymptotically optimal. A further study, based on the Cross-Entropy algorithm, is also performed in order to adaptively optimize the scaling parameter of the covariance. The second estimator decomposes the probability of interest in two contributions and takes advantage of the fact that large deviations for a sum of correlated lognormals are (asymptotically) caused by the largest increment. Importance sampling is then applied to each of these contributions to obtain a combined estimator with asymptotically vanishing relative error.
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页码:5 / 23
页数:18
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