Cortical microcircuits as gated-recurrent neural networks

Costa, Rui, Assael, Ioannis Alexandros, Shillingford, Brendan, Freitas, Nando de, Vogels, TIm

Neural Information Processing Systems 

Cortical circuits exhibit intricate recurrent architectures that are remarkably similar across different brain areas. Such stereotyped structure suggests the existence of common computational principles. However, such principles have remained largely elusive. Inspired by gated-memory networks, namely long short-term memory networks (LSTMs), we introduce a recurrent neural network in which information is gated through inhibitory cells that are subtractive (subLSTM). We propose a natural mapping of subLSTMs onto known canonical excitatory-inhibitory cortical microcircuits.