Author
Giles, M
Haji-Ali, A
Journal title
SIAM/ASA Journal on Uncertainty Quantification
DOI
10.1137/18M1173186
Issue
2
Volume
7
Last updated
2024-04-11T06:48:56.177+01:00
Page
497-525
Abstract
We investigate the problem of computing a nested expectation of the form $\mathbb{P} {[\mathbb{E}[{X | Y]} \geq 0]} = \mathbb{E}{[{{H}}} ({\mathbb{E}{[X| Y])]}}$ where ${{H}}$ is the Heaviside function. This nested expectation appears, for example, when estimating the probability of a large loss from a financial portfolio. We present a method that combines the idea of using Multilevel Monte Carlo (MLMC) for nested expectations with the idea of adaptively selecting the number of samples in the approximation of the inner expectation, as proposed by [M. Broadie, Y. Du, and C. C. Moallemi, Manag. Sci., 57 (2011), pp. 1172--1194]. We propose and analyze an algorithm that adaptively selects the number of inner samples on each MLMC level and prove that the resulting MLMC method with adaptive sampling has an $\mathcal{O}({{\varepsilon}^{-2}|{\rm log}\,\varepsilon|^2})$ complexity to achieve a root mean-squared error ${\varepsilon}$. The theoretical analysis is verified by numerical experiments on a simple model problem. We also present a stochastic root-finding algorithm that, combined with our adaptive methods, can be used to compute other risk measures such as Value-at-Risk (VaR) and Conditional Value-at-Risk (CVaR), the latter being achieved with $\mathcal{O}({{\varepsilon}^{-2}})$ complexity. Read More: https://epubs.siam.org/doi/10.1137/18M1173186
Symplectic ID
974080
Favourite
On
Publication type
Journal Article
Publication date
02 May 2019
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