We show that deep networks can be trained using Hebbian updates yielding similar performance to ordinary back-propagation on challenging image datasets. To overcome the unrealistic symmetry in connections between layers, implicit in back-propagation, the feedback weights are separate from the feedforward weights. The feedback weights are also updated with a local rule, the same as the feedforward weights—a weight is updated solely based on the product of activity of the units it connects. With fixed feedback weights as proposed in Lillicrap et al. (2016) performance degrades quickly as the depth of the network increases. If the feedforward and feedback weights are initialized with the same values, as proposed in Zipser and Rumelhart (1990),...
The backpropagation (BP) algorithm is often thought to be biologically implausible in the brain. One...
Backpropagation learning algorithms typically collapse the network's structure into a single ve...
Neural networks are commonly trained to make predictions through learning algorithms. Contrastive He...
We show that deep networks can be trained using Hebbian updates yielding similar performance to ordi...
The state-of-the art machine learning approach to training deep neural networks, backpropagation, is...
Recent approximations to backpropagation (BP) have mitigated many of BP's computational inefficienci...
The success of deep learning, a brain-inspired form of AI, has sparked interest in understanding how...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Recent advances in deep neural networks (DNNs) owe their success to training algorithms that use bac...
Recent works have examined theoretical and empirical properties of wide neural networks trained in t...
Introduction Backpropagation and contrastive Hebbian learning (CHL) are two supervised learning alg...
Artificial neural networks in their various different forms convincingly dominate machine learning o...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Convolutional networks are ubiquitous in deep learning. They are particularly useful for images, as ...
The backpropagation (BP) algorithm is often thought to be biologically implausible in the brain. One...
Backpropagation learning algorithms typically collapse the network's structure into a single ve...
Neural networks are commonly trained to make predictions through learning algorithms. Contrastive He...
We show that deep networks can be trained using Hebbian updates yielding similar performance to ordi...
The state-of-the art machine learning approach to training deep neural networks, backpropagation, is...
Recent approximations to backpropagation (BP) have mitigated many of BP's computational inefficienci...
The success of deep learning, a brain-inspired form of AI, has sparked interest in understanding how...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Recent advances in deep neural networks (DNNs) owe their success to training algorithms that use bac...
Recent works have examined theoretical and empirical properties of wide neural networks trained in t...
Introduction Backpropagation and contrastive Hebbian learning (CHL) are two supervised learning alg...
Artificial neural networks in their various different forms convincingly dominate machine learning o...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Convolutional networks are ubiquitous in deep learning. They are particularly useful for images, as ...
The backpropagation (BP) algorithm is often thought to be biologically implausible in the brain. One...
Backpropagation learning algorithms typically collapse the network's structure into a single ve...
Neural networks are commonly trained to make predictions through learning algorithms. Contrastive He...