International audienceThe Multilevel Monte-Carlo (MLMC) method developed by Giles [Gil08] has a natural application to the evaluation of nested expectation of the form E [g(E [f (X, Y)|X])], where f, g are functions and (X, Y) a couple of independent random variables. Apart from the pricing of American-type derivatives, such computations arise in a large variety of risk valuations (VaR or CVaR of a portfolio, CVA), and in the assessment of margin costs for centrally cleared portfolios. In this work, we focus on the computation of Initial Margin. We analyze the properties of corresponding MLMC estimators, for which we provide results of asymptotical optimality; at the technical level, we have to deal with limited regularity of the outer func...
In this work, the approximation of Hilbert-space-valued random variables is combined with the approx...
This paper focuses on studying the multilevel Monte Carlo method recently introduced by Giles [8] an...
The expected value of partial perfect information (EVPPI) provides an upper bound on the value of co...
International audienceThe Multilevel Monte-Carlo (MLMC) method developed by Giles [Gil08] has a natu...
International audienceThis paper studies the multilevel Monte-Carlo estimator for the expectation of...
This article discusses MLMC estimators with and without weights, applied to nested expectations of t...
A standard problem in mathematical finance is the calculation of the price of some financial derivativ...
24 pages, 1 figureThis paper focuses on the study of an original combination of the Multilevel Monte...
We study Monte Carlo estimation of the expected value of sample information (EVSI), which measures t...
In this article we propose a novel approach to reduce the computational complex-ity of the dual meth...
Monte Carlo is a simple and flexible tool that is widely used in computational finance. In this cont...
We investigate the problem of computing a nested expectation of the form $\mathbb{P} {[\mathbb{E}[{X...
In this article we propose a novel approach to reduce the computational complexity of the dual metho...
In this work, we tackle the problem of minimising the Conditional-Value-at-Risk (CVaR) of output qua...
International audienceWe aim at analyzing in terms of a.s. convergence and weak rate the performance...
In this work, the approximation of Hilbert-space-valued random variables is combined with the approx...
This paper focuses on studying the multilevel Monte Carlo method recently introduced by Giles [8] an...
The expected value of partial perfect information (EVPPI) provides an upper bound on the value of co...
International audienceThe Multilevel Monte-Carlo (MLMC) method developed by Giles [Gil08] has a natu...
International audienceThis paper studies the multilevel Monte-Carlo estimator for the expectation of...
This article discusses MLMC estimators with and without weights, applied to nested expectations of t...
A standard problem in mathematical finance is the calculation of the price of some financial derivativ...
24 pages, 1 figureThis paper focuses on the study of an original combination of the Multilevel Monte...
We study Monte Carlo estimation of the expected value of sample information (EVSI), which measures t...
In this article we propose a novel approach to reduce the computational complex-ity of the dual meth...
Monte Carlo is a simple and flexible tool that is widely used in computational finance. In this cont...
We investigate the problem of computing a nested expectation of the form $\mathbb{P} {[\mathbb{E}[{X...
In this article we propose a novel approach to reduce the computational complexity of the dual metho...
In this work, we tackle the problem of minimising the Conditional-Value-at-Risk (CVaR) of output qua...
International audienceWe aim at analyzing in terms of a.s. convergence and weak rate the performance...
In this work, the approximation of Hilbert-space-valued random variables is combined with the approx...
This paper focuses on studying the multilevel Monte Carlo method recently introduced by Giles [8] an...
The expected value of partial perfect information (EVPPI) provides an upper bound on the value of co...