Asynchronous Hebbian/anti-Hebbian networks
Journal:
arXiv
Published Date:
Jan 4, 2025
Abstract
Lateral inhibition models coupled with Hebbian plasticity have been shown to
learn factorised causal representations of input stimuli, for instance,
oriented edges are learned from natural images. Currently, these models require
the recurrent dynamics to settle into a stable state before weight changes can
be applied, which is not only biologically implausible, but also impractical
for real-time learning systems. Here, we propose a new Hebbian learning rule
which is implemented using plausible biological mechanisms that have been
observed experimentally. We find that this rule allows for efficient,
time-continuous learning of factorised representations, very similar to the
classic noncontinuous Hebbian/anti-Hebbian learning. Furthermore, we show that
this rule naturally prevents catastrophic forgetting when stimuli from
different distributions are shown sequentially.