Single units in a deep neural network functionally correspond with neurons in the brain: preliminary results
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Martin Schrimpf | Tomaso Poggio | Pouya Bashivan | James J. DiCarlo | Xavier Boix | Yena Han | Kohitij Kar | Luke Arend | T. Poggio | L. Arend | X. Boix | P. Bashivan | Kohitij Kar | James J. DiCarlo | Martin Schrimpf | Yena Han
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