Blount Drew, Banda Peter, Teuscher Christof, Stefanovic Darko
Wild Me.
University of Luxembourg.
Artif Life. 2017 Summer;23(3):295-317. doi: 10.1162/ARTL_a_00233.
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.
受在活细胞内执行复杂信息处理的天然生物化学物质启发,我们设计并模拟了一种化学实现的前馈神经网络,它通过一种基于化学反应的新型反向传播类似物进行学习。我们的网络在一个模拟化学系统中实现,其中各个神经元由半透性的细胞状膜彼此分隔开。我们的分区式模块化设计允许从相同的构建模块构建各种网络拓扑结构。这使我们朝着化学环境中的通用自适应学习迈进:在一个具身动力系统中进行湿机器学习。