Neural state space alignment for magnitude generalization in humans and recurrent networks.

Journal: Neuron
Published Date:

Abstract

A prerequisite for intelligent behavior is to understand how stimuli are related and to generalize this knowledge across contexts. Generalization can be challenging when relational patterns are shared across contexts but exist on different physical scales. Here, we studied neural representations in humans and recurrent neural networks performing a magnitude comparison task, for which it was advantageous to generalize concepts of "more" or "less" between contexts. Using multivariate analysis of human brain signals and of neural network hidden unit activity, we observed that both systems developed parallel neural "number lines" for each context. In both model systems, these number state spaces were aligned in a way that explicitly facilitated generalization of relational concepts (more and less). These findings suggest a previously overlooked role for neural normalization in supporting transfer of a simple form of abstract relational knowledge (magnitude) in humans and machine learning systems.

Authors

  • Hannah Sheahan
    Department of Experimental Psychology, University of Oxford, Oxford, UK. Electronic address: sheahan.hannah@gmail.com.
  • Fabrice Luyckx
    Department of Experimental Psychology, University of Oxford, Oxford, UK.
  • Stephanie Nelli
    Department of Experimental Psychology, University of Oxford, Oxford, UK. stephanie.nelli@psy.ox.ac.uk.
  • Clemens Teupe
    Department of Experimental Psychology, University of Oxford, Oxford, UK.
  • Christopher Summerfield
    DeepMind, 5 New Street Square, London, UK; Department of Experimental Psychology, University of Oxford, Oxford, UK.