Artificial neural networks for neuroscientists: A primer

1 Jun 2020 Guangyu Robert Yang Xiao-Jing Wang

Artificial neural networks (ANNs) are essential tools in machine learning that have drawn increasing attention in neuroscience. Besides offering powerful techniques for data analysis, ANNs provide a new approach for neuroscientists to build models for complex behaviors, heterogeneous neural activity and circuit connectivity, as well as to explore optimization in neural systems, in ways that traditional models are not designed for... (read more)

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