Neural Architecture Search with Mixed Bio-inspired Learning Rules

July 17, 2025 ยท Declared Dead ยท ๐Ÿ› European Conference on Artificial Intelligence

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Authors Imane Hamzaoui, Riyadh Baghdadi arXiv ID 2507.13485 Category cs.NE: Neural & Evolutionary Cross-listed cs.AI, cs.CV, cs.LG Citations 0 Venue European Conference on Artificial Intelligence Last Checked 3 months ago
Abstract
Bio-inspired neural networks are attractive for their adversarial robustness, energy frugality, and closer alignment with cortical physiology, yet they often lag behind back-propagation (BP) based models in accuracy and ability to scale. We show that allowing the use of different bio-inspired learning rules in different layers, discovered automatically by a tailored neural-architecture-search (NAS) procedure, bridges this gap. Starting from standard NAS baselines, we enlarge the search space to include bio-inspired learning rules and use NAS to find the best architecture and learning rule to use in each layer. We show that neural networks that use different bio-inspired learning rules for different layers have better accuracy than those that use a single rule across all the layers. The resulting NN that uses a mix of bio-inspired learning rules sets new records for bio-inspired models: 95.16% on CIFAR-10, 76.48% on CIFAR-100, 43.42% on ImageNet16-120, and 60.51% top-1 on ImageNet. In some regimes, they even surpass comparable BP-based networks while retaining their robustness advantages. Our results suggest that layer-wise diversity in learning rules allows better scalability and accuracy, and motivates further research on mixing multiple bio-inspired learning rules in the same network.
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