Resonant Sparse Geometry Networks
This work addresses the problem of high computational cost and parameter inefficiency in neural networks for researchers and practitioners, offering a biologically plausible alternative, though it is incremental in applying brain-inspired principles to improve existing architectures.
The paper tackles the computational inefficiency of dense attention mechanisms in Transformers by introducing Resonant Sparse Geometry Networks (RSGN), a brain-inspired architecture with self-organizing sparse connectivity, achieving 96.5% accuracy on long-range dependency tasks with 15x fewer parameters and 23.8% accuracy on hierarchical classification with 10x fewer parameters than baselines.
We introduce Resonant Sparse Geometry Networks (RSGN), a brain-inspired architecture with self-organizing sparse hierarchical input-dependent connectivity. Unlike Transformer architectures that employ dense attention mechanisms with O(n^2) computational complexity, RSGN embeds computational nodes in learned hyperbolic space where connection strength decays with geodesic distance, achieving dynamic sparsity that adapts to each input. The architecture operates on two distinct timescales: fast differentiable activation propagation optimized through gradient descent, and slow Hebbian-inspired structural learning for connectivity adaptation through local correlation rules. We provide rigorous mathematical analysis demonstrating that RSGN achieves O(n*k) computational complexity, where k << n represents the average active neighborhood size. Experimental evaluation on hierarchical classification and long-range dependency tasks demonstrates that RSGN achieves 96.5% accuracy on long-range dependency tasks while using approximately 15x fewer parameters than standard Transformers. On challenging hierarchical classification with 20 classes, RSGN achieves 23.8% accuracy (compared to 5% random baseline) with only 41,672 parameters, nearly 10x fewer than the Transformer baselines which require 403,348 parameters to achieve 30.1% accuracy. Our ablation studies confirm the contribution of each architectural component, with Hebbian learning providing consistent improvements. These results suggest that brain-inspired principles of sparse, geometrically-organized computation offer a promising direction toward more efficient and biologically plausible neural architectures.