The success of deep learning ignited interest in whether the brain learns hierarchical representations using gradient-based learning. However, current biologically plausible methods for gradient-based credit assignment in deep neural networks need infinitesimally small feedback signals, which is problematic in biologically realistic noisy environments and at odds with experimental evidence in neuroscience showing that top-down feedback can significantly influence neural activity. Building upon deep feedback control (DFC), a recently proposed credit assignment method, we combine strong feedback influences on neural activity with gradient-based learning and show that this naturally leads to a novel view on neural network optimization. Instead...
While feedforward deep convolutional neural networks (CNNs) have been a great success in computer vi...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workInternational audienceBrain-ins...
In this article, we address two key challenges in deep reinforcement learning (DRL) setting, sample ...
The success of deep learning ignited interest in whether the brain learns hierarchical representatio...
The success of deep learning sparked interest in whether the brain learns by using similar technique...
Recent advances in deep neural networks (DNNs) owe their success to training algorithms that use bac...
Top-down connections in the biological brain has been shown to be important in high cognitive functi...
Neuroscience has focused on the detailed implementation of computation, studying neural codes, dynam...
The brain uses spikes in neural circuits to perform many dynamical computations. The computations ar...
The brain processes information through many layers of neurons. This deep architecture is representa...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workBrain-inspired machine learning...
The ability to sequentially learn multiple tasks without forgetting is a key skill of biological bra...
Supervised learning in artificial neural networks typically relies on backpropagation, where the wei...
Animal learning is associated with changes in the efficacy of connections between neurons. The rules...
Much recent work has focused on biologically plausible variants of supervised learning algorithms. H...
While feedforward deep convolutional neural networks (CNNs) have been a great success in computer vi...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workInternational audienceBrain-ins...
In this article, we address two key challenges in deep reinforcement learning (DRL) setting, sample ...
The success of deep learning ignited interest in whether the brain learns hierarchical representatio...
The success of deep learning sparked interest in whether the brain learns by using similar technique...
Recent advances in deep neural networks (DNNs) owe their success to training algorithms that use bac...
Top-down connections in the biological brain has been shown to be important in high cognitive functi...
Neuroscience has focused on the detailed implementation of computation, studying neural codes, dynam...
The brain uses spikes in neural circuits to perform many dynamical computations. The computations ar...
The brain processes information through many layers of neurons. This deep architecture is representa...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workBrain-inspired machine learning...
The ability to sequentially learn multiple tasks without forgetting is a key skill of biological bra...
Supervised learning in artificial neural networks typically relies on backpropagation, where the wei...
Animal learning is associated with changes in the efficacy of connections between neurons. The rules...
Much recent work has focused on biologically plausible variants of supervised learning algorithms. H...
While feedforward deep convolutional neural networks (CNNs) have been a great success in computer vi...
'Andrea Alamia' and 'Milad Mozafari' contributed equally to this workInternational audienceBrain-ins...
In this article, we address two key challenges in deep reinforcement learning (DRL) setting, sample ...