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Sequential Estimation using Hierarchically Stratified Domains with Latin Hypercube Sampling

Methodology 2023-11-14 v2

Abstract

Quantifying the effect of uncertainties in systems where only point evaluations in the stochastic domain but no regularity conditions are available is limited to sampling-based techniques. This work presents an adaptive sequential stratification estimation method that uses Latin Hypercube Sampling within each stratum. The adaptation is achieved through a sequential hierarchical refinement of the stratification, guided by previous estimators using local (i.e., stratum-dependent) variability indicators based on generalized polynomial chaos expansions and Sobol decompositions. For a given total number of samples NN, the corresponding hierarchically constructed sequence of Stratified Sampling estimators combined with Latin Hypercube sampling is adequately averaged to provide a final estimator with reduced variance. Numerical experiments illustrate the procedure's efficiency, indicating that it can offer a variance decay proportional to N2N^{-2} in some cases.

Keywords

Cite

@article{arxiv.2305.13421,
  title  = {Sequential Estimation using Hierarchically Stratified Domains with Latin Hypercube Sampling},
  author = {Sebastian Krumscheid and Per Pettersson},
  journal= {arXiv preprint arXiv:2305.13421},
  year   = {2023}
}
R2 v1 2026-06-28T10:42:01.291Z