$μ$PC: Scaling Predictive Coding to 100+ Layer Networks
Journal:
arXiv
Published Date:
May 19, 2025
Abstract
The biological implausibility of backpropagation (BP) has motivated many
alternative, brain-inspired algorithms that attempt to rely only on local
information, such as predictive coding (PC) and equilibrium propagation.
However, these algorithms have notoriously struggled to train very deep
networks, preventing them from competing with BP in large-scale settings.
Indeed, scaling PC networks (PCNs) has recently been posed as a challenge for
the community (Pinchetti et al., 2024). Here, we show that 100+ layer PCNs can
be trained reliably using a Depth-$\mu$P parameterisation (Yang et al., 2023;
Bordelon et al., 2023) which we call "$\mu$PC". Through an extensive analysis
of the scaling behaviour of PCNs, we reveal several pathologies that make
standard PCNs difficult to train at large depths. We then show that, despite
addressing only some of these instabilities, $\mu$PC allows stable training of
very deep (up to 128-layer) residual networks on simple classification tasks
with competitive performance and little tuning compared to current benchmarks.
Moreover, $\mu$PC enables zero-shot transfer of both weight and activity
learning rates across widths and depths. Our results have implications for
other local algorithms and could be extended to convolutional and transformer
architectures. Code for $\mu$PC is made available as part of a JAX library for
PCNs at https://github.com/thebuckleylab/jpc (Innocenti et al., 2024).