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Gatsby Computational Neuroscience Unit

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Carina Pamela Curto

 

Wednesday 19th June 2019

 

Time:4.00pm

 

Ground Floor Seminar Room

25 Howland Street, London, W1T 4JG

 

Dynamically relevant motifs in inhibition-dominated networks

 

Many networks in the nervous system possess an abundance of inhibition, which serves to shape and stabilize neural dynamics. The neurons in such networks exhibit intricate patterns of connectivity whose structure controls the allowed patterns of neural activity. In this work, we examine inhibitory threshold-linear networks whose dynamics are constrained by an underlying directed graph. We develop a set of parameter-independent graph rules that enable us to predict features of the dynamics, such as emergent sequences and dynamic attractors, from properties of the graph. These rules provide a direct link between the structure and function of these networks, and may provide new insights into how connectivity shapes dynamics in real neural circuits.