2024
DOI: 10.1609/aaai.v38i13.29409
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What Do Hebbian Learners Learn? Reduction Axioms for Iterated Hebbian Learning

Caleb Schultz Kisby,
Saúl A. Blanco,
Lawrence S. Moss

Abstract: This paper is a contribution to neural network semantics, a foundational framework for neuro-symbolic AI. The key insight of this theory is that logical operators can be mapped to operators on neural network states. In this paper, we do this for a neural network learning operator. We map a dynamic operator [φ] to iterated Hebbian learning, a simple learning policy that updates a neural network by repeatedly applying Hebb's learning rule until the net reaches a fixed-point. Our main result is that we can "trans… Show more

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