Biological credit assignment through dynamic inversion of feedforward networks

07/10/2020
by   William F. Podlaski, et al.
0

Learning depends on changes in synaptic connections deep inside the brain. In multilayer networks, these changes are triggered by error signals fed back from the output, generally through a stepwise inversion of the feedforward processing steps. The gold standard for this process – backpropagation – works well in artificial neural networks, but is biologically implausible. Several recent proposals have emerged to address this problem, but many of these biologically-plausible schemes are based on learning an independent set of feedback connections. This complicates the assignment of errors to each synapse by making it dependent upon a second learning problem, and by fitting inversions rather than guaranteeing them. Here, we show that feedforward network transformations can be effectively inverted through dynamics. We derive this dynamic inversion from the perspective of feedback control, where the forward transformation is reused and dynamically interacts with fixed or random feedback to propagate error signals during the backward pass. Importantly, this scheme does not rely upon a second learning problem for feedback because accurate inversion is guaranteed through the network dynamics. We map these dynamics onto generic feedforward networks, and show that the resulting algorithm performs well on several supervised and unsupervised datasets. We also link this dynamic inversion to Gauss-Newton optimization, suggesting a biologically-plausible approximation to second-order learning. Overall, our work introduces an alternative perspective on credit assignment in the brain, and proposes a special role for temporal dynamics and feedback control during learning.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/09/2018

Error Forward-Propagation: Reusing Feedforward Connections to Propagate Errors in Deep Learning

We introduce Error Forward-Propagation, a biologically plausible mechani...
research
09/07/2022

Multimodal Speech Enhancement Using Burst Propagation

This paper proposes the MBURST, a novel multimodal solution for audio-vi...
research
02/24/2020

Supervised Deep Similarity Matching

We propose a novel biologically-plausible solution to the credit assignm...
research
12/30/2016

Feedback Networks

Currently, the most successful learning models in computer vision are ba...
research
10/28/2022

Meta-Learning Biologically Plausible Plasticity Rules with Random Feedback Pathways

Backpropagation is widely used to train artificial neural networks, but ...
research
12/10/2019

Backprop Diffusion is Biologically Plausible

The Backpropagation algorithm relies on the abstraction of using a neura...
research
11/11/2021

Does the Brain Infer Invariance Transformations from Graph Symmetries?

The invariance of natural objects under perceptual changes is possibly e...

Please sign up or login with your details

Forgot password? Click here to reset