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Reducing Estimation Uncertainty Using Normalizing Flows and Stratification

Paweł Lorek
Rafał Nowak
Rafał Topolnicki
Tomasz Trzciński
Maciej Zięba
Aleksandra Krystecka
Main:14 Pages
10 Figures
Bibliography:2 Pages
23 Tables
Appendix:24 Pages
Abstract

Estimating the expectation of a real-valued function of a random variable from sample data is a critical aspect of statistical analysis, with far-reaching implications in various applications. Current methodologies typically assume (semi-)parametric distributions such as Gaussian or mixed Gaussian, leading to significant estimation uncertainty if these assumptions do not hold. We propose a flow-based model, integrated with stratified sampling, that leverages a parametrized neural network to offer greater flexibility in modeling unknown data distributions, thereby mitigating this limitation. Our model shows a marked reduction in estimation uncertainty across multiple datasets, including high-dimensional (30 and 128) ones, outperforming crude Monte Carlo estimators and Gaussian mixture models. Reproducible code is available atthis https URL.

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