English

A Foundation Model for Zero-Shot Logical Rule Induction

Artificial Intelligence 2026-05-29 v2 Machine Learning Symbolic Computation

Abstract

Inductive Logic Programming (ILP) learns interpretable logical rules from data. Existing methods are transductive: their learned parameters are bound to specific predicates and require retraining for each new task. We introduce Neural Rule Inducer (NRI), a pretrained model for zero-shot rule induction. Rather than encoding literal identities, NRI represents literals using domain-agnostic statistical properties such as class-conditional rates, entropy, and co-occurrence, which generalize across variable identities and counts without retraining. The model consists of a statistical encoder and a parallel slot-based decoder. Parallel decoding preserves the permutation invariance of logical disjunction; an autoregressive decoder would instead impose an arbitrary clause order. Product T-norm relaxation makes rule execution differentiable, allowing end-to-end training on prediction accuracy alone. We evaluate NRI on rule recovery, robustness to label noise and spurious correlations, and zero-shot transfer to real-world benchmarks, and we believe this work opens up the possibility of foundation models for symbolic reasoning. Code and the reference checkpoint are available at https://github.com/phuayj/neural-rule-inducer.

Keywords

Cite

@article{arxiv.2605.04916,
  title  = {A Foundation Model for Zero-Shot Logical Rule Induction},
  author = {Yin Jun Phua},
  journal= {arXiv preprint arXiv:2605.04916},
  year   = {2026}
}

Comments

Camera-ready version accepted at IJCAI 2026, with full appendices

R2 v1 2026-07-01T12:52:49.587Z