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To find better neural network models of human vision, find better neural network models of primate vision

Kamila Maria Jozwik, Martin Schrimpf, Nancy Kanwisher, James J. DiCarlo
doi: https://doi.org/10.1101/688390
Kamila Maria Jozwik
1University of Cambridge
2McGovern Institute for Brain Research at Massachusetts Institute of Technology
3Center for Brains, Minds and Machines
4Department of Brain and Cognitive Sciences
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Martin Schrimpf
2McGovern Institute for Brain Research at Massachusetts Institute of Technology
3Center for Brains, Minds and Machines
4Department of Brain and Cognitive Sciences
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Nancy Kanwisher
2McGovern Institute for Brain Research at Massachusetts Institute of Technology
3Center for Brains, Minds and Machines
4Department of Brain and Cognitive Sciences
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James J. DiCarlo
2McGovern Institute for Brain Research at Massachusetts Institute of Technology
3Center for Brains, Minds and Machines
4Department of Brain and Cognitive Sciences
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Abstract

Specific deep artificial neural networks (ANNs) are the current best models of ventral visual processing and object recognition behavior in monkeys. We here explore whether models of non-human primate vision generalize to visual processing in the human primate brain. Specifically, we asked if model match to monkey IT is a predictor of model match to human IT, even when scoring those matches on different images. We found that the model match to monkey IT is a positive predictor of the model match to human IT (R = 0.36), and that this approach outperforms the current standard predictor of model accuracy on ImageNet. This suggests a more powerful approach for pre-selecting models as hypotheses of human brain processing.

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Posted July 02, 2019.
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To find better neural network models of human vision, find better neural network models of primate vision
Kamila Maria Jozwik, Martin Schrimpf, Nancy Kanwisher, James J. DiCarlo
bioRxiv 688390; doi: https://doi.org/10.1101/688390
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To find better neural network models of human vision, find better neural network models of primate vision
Kamila Maria Jozwik, Martin Schrimpf, Nancy Kanwisher, James J. DiCarlo
bioRxiv 688390; doi: https://doi.org/10.1101/688390

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