AI RESEARCH

Hybrid Models for Natural Language Reasoning: The Case of Syllogistic Logic

arXiv CS.LG

ArXi:2510.09472v2 Announce Type: replace-cross Despite the remarkable progress in neural models, their ability to generalize, a cornerstone for applications such as logical reasoning, remains a critical challenge. We delineate two fundamental aspects of this ability: compositionality, the capacity to abstract atomic logical rules underlying complex inferences, and recursiveness, the aptitude to build intricate representations through iterative application of inference rules. In the literature, these two aspects are often conflated under the umbrella term of generalization.