Axiom-Aware FunSearch for Non-Constructive Mathematics
Max Esposito, Besart Shyti
NeurIPS 2025
We introduce I-RAVEN-X, a symbolic benchmark designed to evaluate generalization and robustness in analogical and mathematical reasoning for Large Language Models (LLMs) and Large Reasoning Models (LRMs). I-RAVEN-X extends I-RAVEN by increasing operand complexity, attribute range, and introducing perceptual uncertainty. Compared to LLMs, empirical results on I-RAVEN-X show that LRMs achieve improved productivity and systematicity on longer reasoning relations and wider attribute ranges, respectively. For instance, LRMs experience a significantly smaller degradation on arithmetic accuracy (80.5% → 63.0%) compared to LLMs (59.3% → 4.4%). However, LRMs are still significantly challenged by reasoning under uncertainty (−61.8% in task accuracy) and cannot effectively explore multiple probabilistic outcomes in superposition.
Max Esposito, Besart Shyti
NeurIPS 2025
Jung koo Kang
NeurIPS 2025
C.A. Micchelli, W.L. Miranker
Journal of the ACM
Isha Puri, Shivchander Sudalairaj, et al.
NeurIPS 2025