2021
DOI: 10.48550/arxiv.2102.07060
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Achieving Efficiency in Black Box Simulation of Distribution Tails with Self-structuring Importance Samplers

Abstract: Motivated by the increasing adoption of models which facilitate greater automation in risk management and decision-making, this paper presents a novel Importance Sampling (IS) scheme for measuring distribution tails of objectives modeled with enabling tools such as feature-based decision rules, mixed integer linear programs, deep neural networks, etc. Conventional efficient IS approaches suffer from feasibility and scalability concerns due to the need to intricately tailor the sampler to the underlying probabi… Show more

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Cited by 1 publication
(2 citation statements)
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References 66 publications
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“…Second, a recent work Deo and Murthy (2021) proposes an elegant IS method based on the self-similarity property of the optimal IS distribution to achieve logarithmic efficiency. They require the imposition of a risk function that is so-called asymptotically homogeneous and has a known order of growth.…”
Section: Efficiency Guaranteesmentioning
confidence: 99%
See 1 more Smart Citation
“…Second, a recent work Deo and Murthy (2021) proposes an elegant IS method based on the self-similarity property of the optimal IS distribution to achieve logarithmic efficiency. They require the imposition of a risk function that is so-called asymptotically homogeneous and has a known order of growth.…”
Section: Efficiency Guaranteesmentioning
confidence: 99%
“…They require the imposition of a risk function that is so-called asymptotically homogeneous and has a known order of growth. Compared to Deo and Murthy (2021), we do not introduce risk functions or impose any accompanying analytical assumptions, but we require light-tailedness and the geometric premise that the rare-event set is orthogonally monotone. Our paper is connected to Deo and Murthy (2021) in that under their asymptotic homogeneity condition, we have, in our notation, x ∈ S γ implies tx ∈ S γ for any t > 1 in R when x is large enough in a suitable sense.…”
Section: Efficiency Guaranteesmentioning
confidence: 99%