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Caitlyn Parmelee1, Juliana Londono Alvarez2, Carina Curto2
1Keene State College, Keene, NH 03431 USA.
This study explores how inhibition-dominated neural networks, specifically combinatorial threshold-linear networks (CTLNs), generate sequential activity. We uncover graph rules that predict network dynamics and emergent sequences, offering insights into brain function.
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