LGAINEApr 29

Causal Learning with Neural Assemblies

arXiv:2604.269192.1
Predicted impact top 95% in LG · last 90 daysOriginality Incremental advance
AI Analysis

For researchers in causal learning and biologically plausible AI, this provides an auditable framework that bridges neural dynamics with formal causal models, though it is incremental as it applies known assembly operations to a new problem.

This work introduces DIRECT, a mechanism enabling neural assemblies to learn causal directionality using only local plasticity, achieving perfect structural recovery in supervised settings across multiple domains.

Can Neural Assemblies -- groups of neurons that fire together and strengthen through co-activation -- learn the direction of causal influence between variables? While established as a computationally general substrate for classification, parsing, and planning, neural assemblies have not yet been shown to internalize causal directionality. We demonstrate that the inherent operations of neural assemblies -- projection, local plasticity control, and sparse winner selection -- are sufficient for directional learning. We introduce DIRECT (DIRectional Edge Coupling/Training), a mechanism that co-activates source and target assemblies under an adaptive gain schedule to internalize directed relations. Unlike backpropagation-based methods, DIRECT relies solely on local plasticity, making the resulting causal claims auditable at the mechanism level. Our findings are verified through a dual-readout validation strategy: (i) synaptic-strength asymmetry, measuring the emergent weight gap between forward and reverse links, and (ii) functional propagation overlap, quantifying the reliability of directional signal flow. Across multiple domains, the framework achieves perfect structural recovery under a supervised, known-structure setting. These results establish neural assemblies as an auditable bridge between biologically plausible dynamics and formal causal models, offering an "explainable by design" framework where causal claims are traceable to specific neural winners and synaptic asymmetries.

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