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Incorporating Missingness in a Framework for Generating Realistic Synthetic Randomized Controlled Trial Data

Published: November 28, 2025 | arXiv ID: 2512.00183v1

By: Niki Z. Petrakos, Erica E. M. Moodie, Nicolas Savy

Potential Business Impact:

Creates fake data that includes missing pieces.

Business Areas:
A/B Testing Data and Analytics

The current literature regarding generation of complex, realistic synthetic tabular data, particularly for randomized controlled trials (RCTs), often ignores missing data. However, missing data are common in RCT data and often are not Missing Completely At Random. We bridge the gap of determining how best to generate realistic synthetic data while also accounting for the missingness mechanism. We demonstrate how to generate synthetic missing values while ensuring that synthetic data mimic the targeted real data distribution. We propose and empirically compare several data generation frameworks utilizing various strategies for handling missing data (complete case, inverse probability weighting, and multiple imputation) by quantifying generation performance through a range of metrics. Focusing on the Missing At Random setting, we find that incorporating additional models to account for the missingness always outperformed a complete case approach.

Country of Origin
🇫🇷 🇨🇦 France, Canada

Page Count
59 pages

Category
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