Feb. 5, 2024, 6:44 a.m. | Kevin Max Laura Kriener Garibaldi Pineda Garc\'ia Thomas Nowotny Ismael Jaras Walter Senn Mihai A. Pet

cs.LG updates on arXiv.org arxiv.org

Models of sensory processing and learning in the cortex need to efficiently assign credit to synapses in all areas. In deep learning, a known solution is error backpropagation, which however requires biologically implausible weight transport from feed-forward to feedback paths.
We introduce Phaseless Alignment Learning (PAL), a bio-plausible method to learn efficient feedback weights in layered cortical hierarchies. This is achieved by exploiting the noise naturally found in biophysical systems as an additional carrier of information. In our dynamical system, …

alignment backpropagation bio cortex credit cs.lg cs.ne deep learning error feedback learn processing q-bio.nc sensory solution synapses transport

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