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Synthesizing a Neuron Using Chemical Reactions

机译:使用化学反应合成神经元

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Deep learning and synthetic biology are two highly popular fields and draw lots of attentions. Deep learning has been employed for complex problems, and researchers have developed synthetic biology into a powerful tool for More than Moore. However, few works have considered implementing deep neural networks (DNNs) with synthetic biology. In this paper, by revealing the common probability base, we aim to implement the most fundamental element of DNN, a neuron, using chemical reaction networks (CRNs). We firstly propose a computation model in CRNs, then present our architecture of a neuron using such computation model as a basis. The correctness of such computation model and architecture is proved by both mathematical derivation and silico simulation.
机译:深度学习和合成生物学是两个非常流行的领域,吸引了很多关注。深度学习已被用于解决复杂的问题,研究人员已将合成生物学发展成为比摩尔更强大的工具。但是,很少有人考虑使用合成生物学来实现深度神经网络(DNN)。在本文中,通过揭示共同的概率基础,我们旨在使用化学反应网络(CRN)实现DNN的最基本元素,即神经元。我们首先在CRN中提出一个计算模型,然后以这种计算模型为基础介绍我们的神经元体系结构。通过数学推导和计算机模拟都证明了这种计算模型和体系结构的正确性。

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