Knowledge, Rules and Their Embeddings: Two Paths towards Neuro-Symbolic JEPA
arXiv cs.LG / 3/17/2026
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Key Points
- The paper introduces RiJEPA, a neuro-symbolic framework that combines neural predictive architectures with symbolic logic to improve interpretability and robustness.
- It presents two directions: injecting structured inductive biases via Energy-Based Constraints and a multi-modal dual-encoder to reshape representations toward logical basins, replacing arbitrary correlations with geometry-informed structure.
- It also relaxes discrete symbolic rules into differentiable logic, using gradient-guided Langevin diffusion to enable continuous rule discovery and various inference capabilities.
- Empirical evaluations on synthetic topological simulations and a high-stakes clinical use case demonstrate the approach's effectiveness and potential for robust, generative, and interpretable neuro-symbolic representation learning.
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