Physical networks become what they learn

ORAL

Abstract

Physical networks may adapt to have diverse desired functions or properties, whether by design, evolution or learning. The adaptation process is expected to alter the functionality of the network and its own physics. For networks that naturally minimize a physical scalar, e.g. an energy function, adaptation of function is a double optimization problem, minimizing both a physical and a learning cost function. We study how the process of physical adaptation couples the associated two landscapes. In linear systems, such as self-learning resistor networks, we show how adaptation links the physical and learning Hessian matrices, suggesting that the physical responses of the network to perturbations hold much information about the functions it adapted to perform.

*This work was supported by DOE Basic Energy Sciences through grant DE-SC0020963 (MS,MG,FM,AJL), the UPenn NSF NRT DGE-2152205 (FM) and the Simons Foundation through Investigator grant #327939 to AJL. VB and MS were also supported by NIH CRCNS grant 1R01MH125544-01 and NSF grant CISE 2212519.

Publication: https://arxiv.org/abs/2406.09689

Presenters

  • Menachem Stern

    • AMOLF

Authors

  • Menachem Stern

    • AMOLF
  • Marcelo Guzmán

    • University of Pennsylvania
  • Felipe Martins

    • University of Pennsylvania
  • Andrea J Liu

    • University of Pennsylvania
  • Vijay Balasubramanian

    • University of Pennsylvania