AI RESEARCH
Reinforcing Numerical Reasoning in LLMs for Tabular Prediction via Structural Priors
arXiv CS.LG
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ArXi:2510.17385v3 Announce Type: replace Tabular prediction traditionally relies on gradient-boosted decision trees and deep learning models, which excel in specific tasks but lack interpretability and transferability. Reasoning large language models (LLMs) promise cross-task adaptability with transparent reasoning traces, yet their potential for tabular data remains unrealized. To bridge this gap, we propose a reasoning framework centered on Permutation Relative Policy Optimization (PRPO), a reinforcement learning method that encodes column-permutation invariance as a structural prior.