Hebbian Physics Networks: A Self-Organizing Computational Architecture Based on Local Physical Laws

arXiv — cs.LGWednesday, December 10, 2025 at 5:00:00 AM
  • The Hebbian Physics Network (HPN) has been introduced as a novel computational architecture that utilizes local physical laws to self-organize transport processes. This framework replaces traditional rigid grid systems with a flexible transport geometry, allowing for adaptive weights that evolve based on local thermodynamic forces. The HPN's design aims to enhance the efficiency of solving complex physical problems by ensuring thermodynamic stability through a Hebbian learning mechanism.
  • This development is significant as it offers a new approach to computational modeling in physics, potentially leading to more accurate simulations and solutions in various scientific fields. By leveraging local interactions and adaptive learning, the HPN could improve the understanding and prediction of physical phenomena, which is crucial for advancements in both theoretical and applied physics.
  • The introduction of HPN aligns with ongoing trends in artificial intelligence and machine learning, where adaptive systems are increasingly being explored for their potential to solve complex problems. Similar innovations, such as the BG-HGNN for heterogeneous graphs and wavelet-accelerated quantum neural networks, highlight a growing interest in integrating physical principles with computational techniques. This convergence may pave the way for more robust models that can tackle the intricacies of real-world systems.
— via World Pulse Now AI Editorial System

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