When Tabular Foundation Models Meet Strategic Tabular Data: A Prior Alignment Approach
摘要
Tabular foundation models based on pretrained prior-data fitted networks~(PFNs) have shown strong generalization on diverse tabular tasks, but they are typically designed for \emph{non-strategic} settings where data distributions are independent of deployed classifiers. In many real-world decision scenarios, however, individuals may strategically modify their features after deployment to obtain favorable outcomes, inducing a post-deployment distribution shift. This paper studies whether PFN-style tabular foundation models can generalize to such \emph{strategic} tabular data. We show that strategic manipulation creates a mismatch between the non-strategic prior learned during pretraining and the post-manipulation strategic prior, which leads to systematic prediction bias. To address this issue, we propose \textbf{Strategic Prior-data Fitted Network}~\textit{(SPN)}, an inference-time strategy-aware framework that adapts tabular foundation models to strategic environments without retraining. SPN constructs strategic in-context examples to approximate post-manipulation inputs and aligns PFN predictions with the induced strategic distribution. Experiments on real-world and synthetic tabular datasets show that SPN consistently improves robustness and predictive performance under strategic manipulation compared with both tabular foundation models and classical tabular methods.
引用
@article{arxiv.2605.19662,
title = {When Tabular Foundation Models Meet Strategic Tabular Data: A Prior Alignment Approach},
author = {Xinpeng Lv and Yunxin Mao and Renzhe Xu and Chunyuan Zheng and Yikai Chen and Haoxuan Li and Jinxuan Yang and Kun Kuang and Yuanlong Chen and Mingyang Geng and Wanrong Huang and Shixuan Liu and Shaowu Yang and Wenjing Yang and Zhouchen Lin and Haotian Wang},
journal= {arXiv preprint arXiv:2605.19662},
year = {2026}
}
备注
Accepted by ICML2026