Dynamics and information encoding in adaptive neural networks
ORAL
Abstract
The efficacy of computation in any medium depends greatly on how information is encoded. Biological neural networks capture information and carry out computation in linked cell groups rather than individual neurons. Biocomputing is also known for its rapid adaptation and learning from limited data. We propose that these unique characteristics are key to the observed intelligence in living beings, and thus we study them as foundations responsible for collective, adaptive information processing and learning. In this study we perform optogenetic stimulation and calcium imaging on living neural networks to explore how complex dynamical information is encoded in groups of neurons. Furthermore, we observe how this encoding evolves over time due to network plasticity.
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Presenters
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Noah S Chongsiriwatana
University of Maryland College Park
Authors
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Noah S Chongsiriwatana
University of Maryland College Park
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Anna M Emenheiser
University of Maryland College Park
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Sylvester J Gates III
University of Maryland College Park
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Karima J Perry
University of Maryland College Park
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Hoony Kang
University of Maryland, College Park
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Kate M O'Neill
University of Maryland College Park
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Wolfgang Losert
University of Maryland College Park