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Local kernel renormalization as a mechanism for feature learning in overparametrized convolutional neural networks

Author

Listed:
  • R. Aiudi

    (Università degli Studi di Parma
    Gruppo Collegato di Parma)

  • R. Pacelli

    (sezione di Padova)

  • P. Baglioni

    (sezione di Milano Bicocca)

  • A. Vezzani

    (Università degli Studi di Parma
    Gruppo Collegato di Parma
    Istituto dei Materiali per l’Elettronica ed il Magnetismo (IMEM-CNR))

  • R. Burioni

    (Università degli Studi di Parma
    Gruppo Collegato di Parma)

  • P. Rotondo

    (Università degli Studi di Parma)

Abstract

Empirical evidence shows that fully-connected neural networks in the infinite-width limit (lazy training) eventually outperform their finite-width counterparts in most computer vision tasks; on the other hand, modern architectures with convolutional layers often achieve optimal performances in the finite-width regime. In this work, we present a theoretical framework that provides a rationale for these differences in one-hidden-layer networks; we derive an effective action in the so-called proportional limit for an architecture with one convolutional hidden layer and compare it with the result available for fully-connected networks. Remarkably, we identify a completely different form of kernel renormalization: whereas the kernel of the fully-connected architecture is just globally renormalized by a single scalar parameter, the convolutional kernel undergoes a local renormalization, meaning that the network can select the local components that will contribute to the final prediction in a data-dependent way. This finding highlights a simple mechanism for feature learning that can take place in overparametrized shallow convolutional neural networks, but not in shallow fully-connected architectures or in locally connected neural networks without weight sharing.

Suggested Citation

  • R. Aiudi & R. Pacelli & P. Baglioni & A. Vezzani & R. Burioni & P. Rotondo, 2025. "Local kernel renormalization as a mechanism for feature learning in overparametrized convolutional neural networks," Nature Communications, Nature, vol. 16(1), pages 1-10, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-024-55229-3
    DOI: 10.1038/s41467-024-55229-3
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