Feedforward Chemical Neural Network: A Cellular Chemical System That Learns XOR

Aug 8, 2017ยท
Drew Blount
,
Peter Banda
,
Christof Teuscher
,
Darko Stefanovic
ยท 0 min read
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.
Type
Publication
Artificial Life, 23, 295-317