The Coordinate System Problem in Persistent Structural Memory for Neural Architectures
Abhinaba Basu

TL;DR
This paper introduces the DPPN architecture to explore persistent structural memory in neural networks, revealing that stable coordinate systems and transfer mechanisms are essential for effective memory retention and transfer.
Contribution
It identifies two key requirements for persistent structural memory: stable coordinate systems and effective transfer mechanisms, supported by extensive experiments and novel architectural insights.
Findings
Stable coordinate systems are crucial for persistent memory.
Extrinsic coordinates like Fourier features provide stability but not transfer.
DPPN outperforms baselines in within-task learning and transfer scenarios.
Abstract
We introduce the Dual-View Pheromone Pathway Network (DPPN), an architecture that routes sparse attention through a persistent pheromone field over latent slot transitions, and use it to discover two independent requirements for persistent structural memory in neural networks. Through five progressively refined experiments using up to 10 seeds per condition across 5 model variants and 4 transfer targets, we identify a core principle: persistent memory requires a stable coordinate system, and any coordinate system learned jointly with the model is inherently unstable. We characterize three obstacles -- pheromone saturation, surface-structure entanglement, and coordinate incompatibility -- and show that neither contrastive updates, multi-source distillation, Hungarian alignment, nor semantic decomposition resolves the instability when embeddings are learned from scratch. Fixed random…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Ferroelectric and Negative Capacitance Devices · Advanced Memory and Neural Computing
