Adaptive Multilevel Stochastic Approximation of the Value-at-Risk
Cr\'epey, Frikha, and Louzi (2023) introduced a multilevel stochastic approximation scheme to compute the value-at-risk of a financial loss that is only simulatable by Monte Carlo. The optimal complexity of the scheme is in $O({\varepsilon}^{-5/2})$, ${\varepsilon} > 0$ being a prescribed ac...
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Zusammenfassung: | Cr\'epey, Frikha, and Louzi (2023) introduced a multilevel stochastic
approximation scheme to compute the value-at-risk of a financial loss that is
only simulatable by Monte Carlo. The optimal complexity of the scheme is in
$O({\varepsilon}^{-5/2})$, ${\varepsilon} > 0$ being a prescribed accuracy,
which is suboptimal when compared to the canonical multilevel Monte Carlo
performance. This suboptimality stems from the discontinuity of the Heaviside
function involved in the biased stochastic gradient that is recursively
evaluated to derive the value-at-risk. To mitigate this issue, this paper
proposes and analyzes a multilevel stochastic approximation algorithm that
adaptively selects the number of inner samples at each level, and proves that
its optimal complexity is in $O({\varepsilon}^{-2}|\ln {\varepsilon}|^{5/2})$.
Our theoretical analysis is exemplified through numerical experiments. |
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DOI: | 10.48550/arxiv.2408.06531 |