Deep problems with neural network models of human vision.

Journal: The Behavioral and brain sciences
Published Date:

Abstract

Deep neural networks (DNNs) have had extraordinary successes in classifying photographic images of objects and are often described as the best models of biological vision. This conclusion is largely based on three sets of findings: (1) DNNs are more accurate than any other model in classifying images taken from various datasets, (2) DNNs do the best job in predicting the pattern of human errors in classifying objects taken from various behavioral datasets, and (3) DNNs do the best job in predicting brain signals in response to images taken from various brain datasets (e.g., single cell responses or fMRI data). However, these behavioral and brain datasets do not test hypotheses regarding what features are contributing to good predictions and we show that the predictions may be mediated by DNNs that share little overlap with biological vision. More problematically, we show that DNNs account for almost no results from psychological research. This contradicts the common claim that DNNs are good, let alone the best, models of human object recognition. We argue that theorists interested in developing biologically plausible models of human vision need to direct their attention to explaining psychological findings. More generally, theorists need to build models that explain the results of experiments that manipulate independent variables designed to test hypotheses rather than compete on making the best predictions. We conclude by briefly summarizing various promising modeling approaches that focus on psychological data.

Authors

  • Jeffrey S Bowers
    University of Bristol, United Kingdom. Electronic address: j.bowers@bristol.ac.uk.
  • Gaurav Malhotra
    School of Psychological, Science University of Bristol, Bristol BS8 1TU, UK. Electronic address: gaurav.malhotra@bristol.ac.uk.
  • Marin Dujmović
    School of Psychological Sciences, University of Bristol, Bristol, United Kingdom.
  • Milton Llera Montero
    School of Psychological Science, University of Bristol, Bristol, UK j.bowers@bristol.ac.uk; https://jeffbowers.blogs.bristol.ac.uk/ gaurav.malhotra@bristol.ac.uk marin.dujmovic@bristol.ac.uk m.lleramontero@bristol.ac.uk christian.tsvetkov@bristol.ac.uk valerio.biscione@gmail.com guillermo.puebla@bristol.ac.uk.
  • Christian Tsvetkov
    School of Psychological Science, University of Bristol, Bristol, UK j.bowers@bristol.ac.uk; https://jeffbowers.blogs.bristol.ac.uk/ gaurav.malhotra@bristol.ac.uk marin.dujmovic@bristol.ac.uk m.lleramontero@bristol.ac.uk christian.tsvetkov@bristol.ac.uk valerio.biscione@gmail.com guillermo.puebla@bristol.ac.uk.
  • Valerio Biscione
    School of Psychological Science, University of Bristol, Bristol, UK.
  • Guillermo Puebla
    School of Psychological Science, University of Bristol, UK.
  • Federico Adolfi
    Ernst Strüngmann Institute for Neuroscience in Cooperation with Max-Planck Society.
  • John E Hummel
    Department of Psychology, University of Illinois Urbana-Champaign, Champaign, IL, USA jehummel@illinois.edu rmflood2@illinois.edu.
  • Rachel F Heaton
    Department of Psychology, University of Illinois Urbana-Champaign, Champaign, IL, USA jehummel@illinois.edu rmflood2@illinois.edu.
  • Benjamin D Evans
  • Jeffrey Mitchell
    Department of Informatics, School of Engineering and Informatics, University of Sussex, Brighton, UK b.d.evans@sussex.ac.uk j.mitchell@napier.ac.uk.
  • Ryan Blything
    School of Psychological Science, University of Bristol, 12a Priory Road, Bristol BS8 1TU, UK. Electronic address: ryan.blything@bristol.ac.uk.