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Main Authors: Pfeiffer, Pascal, Gordeev, Dmitry, Müller, Mathias, Fink, Laura, Soler, Joan Salvà, Landry, Mark, Murray, Branden, Conde, Marcos V., Ambati, Sri Satish
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.18383
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author Pfeiffer, Pascal
Gordeev, Dmitry
Müller, Mathias
Fink, Laura
Soler, Joan Salvà
Landry, Mark
Murray, Branden
Conde, Marcos V.
Ambati, Sri Satish
author_facet Pfeiffer, Pascal
Gordeev, Dmitry
Müller, Mathias
Fink, Laura
Soler, Joan Salvà
Landry, Mark
Murray, Branden
Conde, Marcos V.
Ambati, Sri Satish
contents We present TabH2O, a foundation model for tabular data that performs classification and regression in a single forward pass via in-context learning. TabH2O builds on the TabICL architecture with several key modifications: (1) unified training, a single model handles both classification and regression via a dual-head architecture, eliminating the need for separate models and reducing total pretraining cost; (2) single-stage pretraining, training stability improvements (bounded scalable softmax, inter-stage normalization, learnable residual scaling, logit soft-capping) eliminate the need for multi-stage curriculum learning, enabling training with full-length sequences from the start; and (3) noise-aware pretraining, synthetic datasets include explicit noise dimensions to teach the model robustness to irrelevant features. We evaluate TabH2O v1 (29.2M parameters) on the TALENT benchmark (300 datasets), where it achieves an average rank of 2.55 out of 6 evaluated methods, outperforming tuned CatBoost (4.07), H2O AutoML (4.18), and LightGBM (5.08), competitive with TabPFN v2.6 (2.74), and behind TabICL v2 (2.12), while placing in the top-3 on 81% of the testing datasets across classification and regression tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2605_18383
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TabH2O: A Unified Foundation Model for Tabular Prediction
Pfeiffer, Pascal
Gordeev, Dmitry
Müller, Mathias
Fink, Laura
Soler, Joan Salvà
Landry, Mark
Murray, Branden
Conde, Marcos V.
Ambati, Sri Satish
Machine Learning
We present TabH2O, a foundation model for tabular data that performs classification and regression in a single forward pass via in-context learning. TabH2O builds on the TabICL architecture with several key modifications: (1) unified training, a single model handles both classification and regression via a dual-head architecture, eliminating the need for separate models and reducing total pretraining cost; (2) single-stage pretraining, training stability improvements (bounded scalable softmax, inter-stage normalization, learnable residual scaling, logit soft-capping) eliminate the need for multi-stage curriculum learning, enabling training with full-length sequences from the start; and (3) noise-aware pretraining, synthetic datasets include explicit noise dimensions to teach the model robustness to irrelevant features. We evaluate TabH2O v1 (29.2M parameters) on the TALENT benchmark (300 datasets), where it achieves an average rank of 2.55 out of 6 evaluated methods, outperforming tuned CatBoost (4.07), H2O AutoML (4.18), and LightGBM (5.08), competitive with TabPFN v2.6 (2.74), and behind TabICL v2 (2.12), while placing in the top-3 on 81% of the testing datasets across classification and regression tasks.
title TabH2O: A Unified Foundation Model for Tabular Prediction
topic Machine Learning
url https://arxiv.org/abs/2605.18383