AI RESEARCH

Self-Improving Tabular Language Models via Iterative Group Alignment

arXiv CS.AI

ArXi:2604.18966v1 Announce Type: cross While language models have been adapted for tabular data generation, two fundamental limitations remain: (1) static fine-tuning produces models that cannot learn from their own generated samples and adapt to self-correct, and (2) autoregressive objectives preserve local token coherence but neglect global statistical properties, degrading tabular quality. Reinforcement learning offers a potential solution but requires designing reward functions that balance competing objectives -- impractical for tabular data. To fill the gap, we.