Linking Connectivity, Dynamics, and Computations in Low-Rank Recurrent Neural Networks.

Journal: Neuron
Published Date:

Abstract

Large-scale neural recordings have established that the transformation of sensory stimuli into motor outputs relies on low-dimensional dynamics at the population level, while individual neurons exhibit complex selectivity. Understanding how low-dimensional computations on mixed, distributed representations emerge from the structure of the recurrent connectivity and inputs to cortical networks is a major challenge. Here, we study a class of recurrent network models in which the connectivity is a sum of a random part and a minimal, low-dimensional structure. We show that, in such networks, the dynamics are low dimensional and can be directly inferred from connectivity using a geometrical approach. We exploit this understanding to determine minimal connectivity required to implement specific computations and find that the dynamical range and computational capacity quickly increase with the dimensionality of the connectivity structure. This framework produces testable experimental predictions for the relationship between connectivity, low-dimensional dynamics, and computational features of recorded neurons.

Authors

  • Francesca Mastrogiuseppe
    Laboratoire de Neurosciences Cognitives, INSERM U960, École Normale Supérieure - PSL Research University, 75005 Paris, France; Laboratoire de Physique Statistique, CNRS UMR 8550, École Normale Supérieure - PSL Research University, 75005 Paris, France.
  • Srdjan Ostojic
    Laboratoire de Neurosciences Cognitives, Inserm UMR No. 960, Ecole Normale Supérieure, PSL Research University, 75230 Paris, France.