Tabular Few-Shot Generalization Across Heterogeneous Feature Spaces
Zhu, Max, Kobalczyk, Katarzyna, Petrovic, Andrija, Nikolic, Mladen, van der Schaar, Mihaela, Delibasic, Boris, Lio, Petro
–arXiv.org Artificial Intelligence
Despite the prevalence of tabular datasets, few-shot learning remains under-explored within this domain. Existing few-shot methods are not directly applicable to tabular datasets due to varying column relationships, meanings, and permutational invariance. To address these challenges, we propose FLAT-a novel approach to tabular few-shot learning, encompassing knowledge sharing between datasets with heterogeneous feature spaces. Utilizing an encoder inspired by Dataset2Vec, FLAT learns low-dimensional embeddings of datasets and their individual columns, which facilitate knowledge transfer and generalization to previously unseen datasets. A decoder network parametrizes the predictive target network, implemented as a Graph Attention Network, to accommodate the heterogeneous nature of tabular datasets. Experiments on a diverse collection of 118 UCI datasets demonstrate FLAT's successful generalization to new tabular datasets and a considerable improvement over the baselines.
arXiv.org Artificial Intelligence
Nov-16-2023