| Literature DB >> 28786723 |
Drew Blount1, Peter Banda2, Christof Teuscher3, Darko Stefanovic4.
Abstract
Inspired by natural biochemicals that perform complex information processing within living cells, we design and simulate a chemically implemented feedforward neural network, which learns by a novel chemical-reaction-based analogue of backpropagation. Our network is implemented in a simulated chemical system, where individual neurons are separated from each other by semipermeable cell-like membranes. Our compartmentalized, modular design allows a variety of network topologies to be constructed from the same building blocks. This brings us towards general-purpose, adaptive learning in chemico: wet machine learning in an embodied dynamical system.Entities:
Keywords: Chemical reaction network; cellular compartment learning; error backpropagation; feedforward; linearly inseparable function
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Year: 2017 PMID: 28786723 DOI: 10.1162/ARTL_a_00233
Source DB: PubMed Journal: Artif Life ISSN: 1064-5462 Impact factor: 0.667