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Intuitive physics learning in a deep-learning model inspired by developmental psychology

Author

Listed:
  • Luis S. Piloto

    (DeepMind
    Princeton Neuroscience Institute, Princeton University)

  • Ari Weinstein

    (DeepMind)

  • Peter Battaglia

    (DeepMind)

  • Matthew Botvinick

    (DeepMind
    Gatsby Computational Neuroscience Unit, University College London)

Abstract

‘Intuitive physics’ enables our pragmatic engagement with the physical world and forms a key component of ‘common sense’ aspects of thought. Current artificial intelligence systems pale in their understanding of intuitive physics, in comparison to even very young children. Here we address this gap between humans and machines by drawing on the field of developmental psychology. First, we introduce and open-source a machine-learning dataset designed to evaluate conceptual understanding of intuitive physics, adopting the violation-of-expectation (VoE) paradigm from developmental psychology. Second, we build a deep-learning system that learns intuitive physics directly from visual data, inspired by studies of visual cognition in children. We demonstrate that our model can learn a diverse set of physical concepts, which depends critically on object-level representations, consistent with findings from developmental psychology. We consider the implications of these results both for AI and for research on human cognition.

Suggested Citation

  • Luis S. Piloto & Ari Weinstein & Peter Battaglia & Matthew Botvinick, 2022. "Intuitive physics learning in a deep-learning model inspired by developmental psychology," Nature Human Behaviour, Nature, vol. 6(9), pages 1257-1267, September.
  • Handle: RePEc:nat:nathum:v:6:y:2022:i:9:d:10.1038_s41562-022-01394-8
    DOI: 10.1038/s41562-022-01394-8
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    References listed on IDEAS

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    1. Andrew W. Senior & Richard Evans & John Jumper & James Kirkpatrick & Laurent Sifre & Tim Green & Chongli Qin & Augustin Žídek & Alexander W. R. Nelson & Alex Bridgland & Hugo Penedones & Stig Petersen, 2020. "Improved protein structure prediction using potentials from deep learning," Nature, Nature, vol. 577(7792), pages 706-710, January.
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