Real-TabPFN: Improving Tabular Foundation Models via Continued Pre-training With Real-World Data
Garg, Anurag, Ali, Muhammad, Hollmann, Noah, Purucker, Lennart, Müller, Samuel, Hutter, Frank
Foundation models for tabular data, like TabPFN, achieve strong performance on small datasets when pre-trained solely on synthetic data. We show that this performance can be significantly boosted by a targeted continued pre-training phase. Specifically, we demonstrate that leveraging a small, curated collection of large, real-world datasets for continued pre-training yields superior downstream predictive accuracy compared to using broader, potentially noisier corpora like CommonCrawl or GitTables. Our resulting model, Real-TabPFN, achieves substantial performance gains on 29 datasets from the OpenML AutoML Benchmark.
Jul-8-2025
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