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A central limit theorem for Latin hypercube sampling with dependence and application to exotic basket option pricing

Published 19 Nov 2013 in q-fin.CP | (1311.4698v1)

Abstract: We consider the problem of estimating $\mathbb{E} [f(U1, \ldots, Ud)]$, where $(U1, \ldots, Ud)$ denotes a random vector with uniformly distributed marginals. In general, Latin hypercube sampling (LHS) is a powerful tool for solving this kind of high-dimensional numerical integration problem. In the case of dependent components of the random vector $(U1, \ldots, Ud)$ one can achieve more accurate results by using Latin hypercube sampling with dependence (LHSD). We state a central limit theorem for the $d$-dimensional LHSD estimator, by this means generalising a result of Packham and Schmidt. Furthermore we give conditions on the function $f$ and the distribution of $(U1, \ldots, Ud)$ under which a reduction of variance can be achieved. Finally we compare the effectiveness of Monte Carlo and LHSD estimators numerically in exotic basket option pricing problems.

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