The backpropagation (BP) algorithm is often thought to be biologically implausible in the brain. One of the main reasons is that BP requires symmetric weight matrices in the feedforward and feed- back pathways. To address this “weight transport problem” (Grossberg, 1987), two more biologically plausible algorithms, proposed by Liao et al. (2016) and Lillicrap et al. (2016), relax BP’s weight symmetry requirements and demonstrate comparable learning capabilities to that of BP on small datasets. However, a recent study by Bartunov et al. (2018) evaluate variants of target-propagation (TP) and feedback alignment (FA) on MINIST, CIFAR, and ImageNet datasets, and find that although many of the proposed algorithms perform well on MNIST and CIFAR,...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Much recent work has focused on biologically plausible variants of supervised learning algorithms. H...
Motivated by the goal of enabling energy-efficient and/or lower-cost hardware implementations of dee...
The backpropagation (BP) algorithm is often thought to be biologically implausible in the brain. One...
Gradient backpropagation (BP) requires symmetric feedforward and feedback connections-the same weigh...
Gradient backpropagation (BP) requires symmetric feedforward and feedback connections—the same weigh...
The family of feedback alignment (FA) algorithms aims to provide a more biologically motivated alter...
The family of feedback alignment (FA) algorithms aims to provide a more biologically motivated alter...
Several recent studies attempt to address the biological implausibility of the well-known backpropag...
Recent advances in deep neural networks (DNNs) owe their success to training algorithms that use bac...
Gradient backpropagation (BP) requires symmetric feedforward and feedback connections — the same wei...
Many of the recent advances in the field of artificial intelligence have been fueled by the highly s...
Training deep neural networks on large-scale datasets requires significant hardware resources whose ...
Recent works have examined theoretical and empirical properties of wide neural networks trained in t...
The state-of-the art machine learning approach to training deep neural networks, backpropagation, is...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Much recent work has focused on biologically plausible variants of supervised learning algorithms. H...
Motivated by the goal of enabling energy-efficient and/or lower-cost hardware implementations of dee...
The backpropagation (BP) algorithm is often thought to be biologically implausible in the brain. One...
Gradient backpropagation (BP) requires symmetric feedforward and feedback connections-the same weigh...
Gradient backpropagation (BP) requires symmetric feedforward and feedback connections—the same weigh...
The family of feedback alignment (FA) algorithms aims to provide a more biologically motivated alter...
The family of feedback alignment (FA) algorithms aims to provide a more biologically motivated alter...
Several recent studies attempt to address the biological implausibility of the well-known backpropag...
Recent advances in deep neural networks (DNNs) owe their success to training algorithms that use bac...
Gradient backpropagation (BP) requires symmetric feedforward and feedback connections — the same wei...
Many of the recent advances in the field of artificial intelligence have been fueled by the highly s...
Training deep neural networks on large-scale datasets requires significant hardware resources whose ...
Recent works have examined theoretical and empirical properties of wide neural networks trained in t...
The state-of-the art machine learning approach to training deep neural networks, backpropagation, is...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Much recent work has focused on biologically plausible variants of supervised learning algorithms. H...
Motivated by the goal of enabling energy-efficient and/or lower-cost hardware implementations of dee...