Enregistré dans:
Détails bibliographiques
Auteurs principaux: Decruyenaere, Alexander, Dehaene, Heidelinde, Rabaey, Paloma, Polet, Christiaan, Decruyenaere, Johan, Demeester, Thomas, Vansteelandt, Stijn
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2411.04216
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866916566590816256
author Decruyenaere, Alexander
Dehaene, Heidelinde
Rabaey, Paloma
Polet, Christiaan
Decruyenaere, Johan
Demeester, Thomas
Vansteelandt, Stijn
author_facet Decruyenaere, Alexander
Dehaene, Heidelinde
Rabaey, Paloma
Polet, Christiaan
Decruyenaere, Johan
Demeester, Thomas
Vansteelandt, Stijn
contents While synthetic data hold great promise for privacy protection, their statistical analysis poses significant challenges that necessitate innovative solutions. The use of deep generative models (DGMs) for synthetic data generation is known to induce considerable bias and imprecision into synthetic data analyses, compromising their inferential utility as opposed to original data analyses. This bias and uncertainty can be substantial enough to impede statistical convergence rates, even in seemingly straightforward analyses like mean calculation. The standard errors of such estimators then exhibit slower shrinkage with sample size than the typical 1 over root-$n$ rate. This complicates fundamental calculations like p-values and confidence intervals, with no straightforward remedy currently available. In response to these challenges, we propose a new strategy that targets synthetic data created by DGMs for specific data analyses. Drawing insights from debiased and targeted machine learning, our approach accounts for biases, enhances convergence rates, and facilitates the calculation of estimators with easily approximated large sample variances. We exemplify our proposal through a simulation study on toy data and two case studies on real-world data, highlighting the importance of tailoring DGMs for targeted data analysis. This debiasing strategy contributes to advancing the reliability and applicability of synthetic data in statistical inference.
format Preprint
id arxiv_https___arxiv_org_abs_2411_04216
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Debiasing Synthetic Data Generated by Deep Generative Models
Decruyenaere, Alexander
Dehaene, Heidelinde
Rabaey, Paloma
Polet, Christiaan
Decruyenaere, Johan
Demeester, Thomas
Vansteelandt, Stijn
Machine Learning
While synthetic data hold great promise for privacy protection, their statistical analysis poses significant challenges that necessitate innovative solutions. The use of deep generative models (DGMs) for synthetic data generation is known to induce considerable bias and imprecision into synthetic data analyses, compromising their inferential utility as opposed to original data analyses. This bias and uncertainty can be substantial enough to impede statistical convergence rates, even in seemingly straightforward analyses like mean calculation. The standard errors of such estimators then exhibit slower shrinkage with sample size than the typical 1 over root-$n$ rate. This complicates fundamental calculations like p-values and confidence intervals, with no straightforward remedy currently available. In response to these challenges, we propose a new strategy that targets synthetic data created by DGMs for specific data analyses. Drawing insights from debiased and targeted machine learning, our approach accounts for biases, enhances convergence rates, and facilitates the calculation of estimators with easily approximated large sample variances. We exemplify our proposal through a simulation study on toy data and two case studies on real-world data, highlighting the importance of tailoring DGMs for targeted data analysis. This debiasing strategy contributes to advancing the reliability and applicability of synthetic data in statistical inference.
title Debiasing Synthetic Data Generated by Deep Generative Models
topic Machine Learning
url https://arxiv.org/abs/2411.04216