TabPFGen -- Tabular Data Generation with TabPFN
Advances in deep generative modelling have not translated well to tabular data. We argue that this is caused by a mismatch in structure between popular generative models and discriminative models of tabular data. We thus devise a technique to turn TabPFN -- a highly performant transformer initially...
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Zusammenfassung: | Advances in deep generative modelling have not translated well to tabular
data. We argue that this is caused by a mismatch in structure between popular
generative models and discriminative models of tabular data. We thus devise a
technique to turn TabPFN -- a highly performant transformer initially designed
for in-context discriminative tabular tasks -- into an energy-based generative
model, which we dub TabPFGen. This novel framework leverages the pre-trained
TabPFN as part of the energy function and does not require any additional
training or hyperparameter tuning, thus inheriting TabPFN's in-context learning
capability. We can sample from TabPFGen analogously to other energy-based
models. We demonstrate strong results on standard generative modelling tasks,
including data augmentation, class-balancing, and imputation, unlocking a new
frontier of tabular data generation. |
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DOI: | 10.48550/arxiv.2406.05216 |