Predicting Privacy Leakage in Synthetic Tabular Data via Generative Metrics for Diffusion and Autoregressive Models
Description
Generative models have revolutionized multiple domains, yet their application to tabular data remains underexplored. Evaluating generative models for tabular data presents unique challenges due to structural complexity, large-scale variability, and mixed data types, making it difficult to intuitively capture intricate patterns. Existing evaluation metrics offer only partial insights, lacking a comprehensive measure of generative performance. To address this limitation, we propose three novel evaluation metrics: FAED, FPCAD, and RFIS. Our extensive experimental analysis, conducted on three stan
Research goal: Can the new tabular generative metrics effectively predict privacy leakage risks in synthetic data generated by large-scale diffusion models versus autoregressive transformers?
Autonomous synthesis report generated by SOVEREIGN Research Kernel. Tribunal consensus score: 7.6/10.
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