AI RESEARCH

Structural Generalization on SLOG without Hand-Written Rules

arXiv CS.AI

ArXi:2604.26157v1 Announce Type: cross Structural generalization in semantic parsing requires systems to apply learned compositional rules to novel structural combinations. Existing approaches either rely on hand-written algebraic rules (AM-Parser) or fail to generalize structurally (Transformer-based models). We present an alternative requiring no hand-written compositional rules, based on a neural cellular automaton (NCA) with a discrete bottleneck: all compositional rules are learned from data through local iteration.