Protein pathways as a catalyst to directed evolution of the topology of artificial neural networks
Lao, Oscar, Zacharopoulos, Konstantinos, Fournaris, Apostolos, Schifanella, Rossano, Arapakis, Ioannis
–arXiv.org Artificial Intelligence
In the present article, we propose a paradigm shift on evolving Artificial Neural Networks (ANNs) towards a new bio-inspired design that is grounded on the structural properties, interactions, and dynamics of protein networks (PNs): the Artificial Protein Network (APN). This introduces several advantages previously unrealized by state-of-the-art approaches in NE: (1) We can draw inspiration from how nature, thanks to millions of years of evolution, efficiently encodes protein interactions in the DNA to translate our APN to silicon DNA. This helps bridge the gap between syntax and semantics observed in current NE approaches.
arXiv.org Artificial Intelligence
Jun-7-2024
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