Quantum spin models for numerosity perception

PLoS One. 2023 Apr 25;18(4):e0284610. doi: 10.1371/journal.pone.0284610. eCollection 2023.

Abstract

Humans share with animals, both vertebrates and invertebrates, the capacity to sense the number of items in their environment already at birth. The pervasiveness of this skill across the animal kingdom suggests that it should emerge in very simple populations of neurons. Current modelling literature, however, has struggled to provide a simple architecture carrying out this task, with most proposals suggesting the emergence of number sense in multi-layered complex neural networks, and typically requiring supervised learning; while simple accumulator models fail to predict Weber's Law, a common trait of human and animal numerosity processing. We present a simple quantum spin model with all-to-all connectivity, where numerosity is encoded in the spectrum after stimulation with a number of transient signals occurring in a random or orderly temporal sequence. We use a paradigmatic simulational approach borrowed from the theory and methods of open quantum systems out of equilibrium, as a possible way to describe information processing in neural systems. Our method is able to capture many of the perceptual characteristics of numerosity in such systems. The frequency components of the magnetization spectra at harmonics of the system's tunneling frequency increase with the number of stimuli presented. The amplitude decoding of each spectrum, performed with an ideal-observer model, reveals that the system follows Weber's law. This contrasts with the well-known failure to reproduce Weber's law with linear system or accumulators models.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Animals
  • Cognition*
  • Humans
  • Infant, Newborn
  • Neural Networks, Computer*
  • Neurons / physiology
  • Perception
  • Visual Perception / physiology

Grants and funding

JYM was supported by the European Social Fund REACT EU through the Italian national program PON 2014-2020, DM MUR 1062/2021. GMC was supported by Horizon 2020 European Research Council Advanced Grant GenPercept No. 832813 (to D.C.B.), Italian Ministry of Education PRIN2017 Grants 2017SBCPZY, and FLAG-ERA Joint Transnational Call 2019 Grant DOMINO. MCM was supported by GenPercept ERC-adv no. 832813 and PRIN 2017.