Multi-Scale Temporal Homeostasis Enables Efficient and Robust Neural Networks
About
Artificial neural networks achieve strong performance on benchmark tasks but remain fundamentally brittle under perturbations, limiting their deployment in real-world settings. In contrast, biological nervous systems sustain reliable function across decades through homeostatic regulation coordinated across multiple temporal scales. Inspired by this principle, this presents Multi-Scale Temporal Homeostasis (MSTH), a biologically grounded framework that integrates ultra-fast (5-ms), fast (2-s), medium (5-min) and slow (1-hrs) regulation into artificial networks. MSTH implements the cross-scale coordination system for artificial neural networks, providing a unified temporal hierarchy that moves beyond superficial biomimicry. The cross-scale coordination enhances computational efficiency through evolutionary-refined optimization mechanisms. Experiments across molecular, graph and image classification benchmarks show that MSTH consistently improves accuracy, eliminates catastrophic failures and enhances recovery from perturbations. Moreover, MSTH outperforms both single-scale bio-inspired models and established state-of-the-art methods, demonstrating generality across diverse domains. These findings establish cross-scale temporal coordination as a core principle for stabilizing artificial neural systems, positioning MSTH as a foundation for building robust, resilient and biologically faithful intelligence.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Graph Classification | COX2 | Accuracy84.96 | 40 | |
| Molecular Classification | HIV | ROC-AUC79.5 | 35 | |
| Graph Classification | Pubmed | Accuracy90.97 | 31 | |
| Graph Classification | BZR | Accuracy85.73 | 29 | |
| Molecular Classification | PROTEINS | Accuracy77.07 | 5 | |
| Graph Classification | Cora | Accuracy89.49 | 5 | |
| Graph Classification | Citeseer | Accuracy78.43 | 5 |