Maintaining and Updating Accurate Internal Representations of Continuous Variables with a Handful of Neurons
Event Details
- Type
- Center for Studies in Physics and Biology Seminars
- Speaker(s)
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Marcella Noorman, Ph.D., associate, Howard Hughes Medical Institute, Janelia Research Campus
- Speaker bio(s)
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Many animals rely on persistent internal representations of continuous angular variables for working memory, motor control, and navigation. Theories have proposed that such representations are maintained by a class of recurrently connected networks called ring attractor networks. These networks rely on large numbers of neurons to maintain continuous and stable representations and to accurately integrate incoming signals. The head direction system of the fruit fly, however, seems to achieve these properties with a remarkably small network. These findings challenge our understanding of ring attractors and their putative implementation in neural circuits. In this talk, I will show analytically how small networks can overcome the constraints of their size to generate a ring attractor and are hence capable of stably maintaining an internal representation of a continuous, periodic variable. Further, I will show how ring attractors emerge in small threshold linear networks through the coordination of a discrete set of line attractors. More broadly, this work informs our understanding of the functional capabilities of small, discrete systems.
- Open to
- Public
- Phone
- (212) 327-8636
- Sponsor
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Melanie Lee
(212) 327-8636
leem@rockefeller.edu