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

arXiv.org Machine Learning 

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.

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