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University of Cambridge, Department of Engineering
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Schedule
Wednesday, December 1, 2021
4:00 PM Europe/London
Domain
NeuroscienceHost
CamBRAIN Virtual Journal Club
Duration
70 minutes
In modern neuroscience, we often want to extract information from recordings of many neurons in the brain. Unfortunately, the activity of individual neurons is very noisy, making it difficult to relate to cognition and behavior. Thankfully, we can use the correlations across time and neurons to denoise the data we record. In particular, using recent advances in machine learning, we can build models which harness this structure in the data to extract more interpretable signals. In this talk, we present two such methods as well as examples of how they can help us gain further insights into the neural underpinnings of behavior.
Marine Schimel & Kris Jensen
University of Cambridge, Department of Engineering
neuro
neuro
neuro
n the neurosciences the need for some 'overarching' theory is sometimes expressed, but it is not always obvious what is meant by this. One can perhaps agree that in modern science observation and expe