Summary: The results from the training of neural networks in v2 of Reinforced SciNet, published partially in v2 of the paper Operationally meaningful representations of physical systems in neural networks. File description: results.txt - The results from the training during reinforcement learning. results_loss.txt - The loss from the training during representation learning. selection.txt - The noise level of latent neurons during representation learning. Parameters: Reinforcement Learning Server parameters 21 workers, 2 predictors, 1 trainer each 3M episodes Training parameters glow: 0.1 gamma: 0.01 softmax: 0.5 learning rate: 0.00005 reward clipping: 1.0e-7 Network parameters DPS model: {'env1': [128, 128, 1...
Description of Thesis Title: Modification of Internal Representations as a Mechanism for Learning i...
<p>(a) Regression based analysis of neuronal learning. Each row in the colormap shows an individual ...
<p>A SAILnet simulation was performed in which the RFs were initially randomized, and the recurrent ...
Trained models for "What matters in reinforcement learning for tractography". These can be loaded to...
These are the simulation data that underly some of the figures in this paper: https://doi.org/10.110...
(A) Behavior of output neurons (MBONs) during first-order conditioning. During training, a CS+ (blue...
The autoencoder algorithm is a simple but powerful unsupervised method for training neural networks....
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
(A) The task consisted of trials during which noisy stimuli from the MNIST dataset were shown. A tri...
(A) Illustration of the predictability-interpretability trade-off plane. Theoretical models (green) ...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
A, Schematic of a sparsely connected network with 3 hidden layers. The output layer is fully connect...
The data are related to the following article: Antonietti Alberto, Monaco Jessica, D'Angelo Egidio,...
We investigate the effects of neural network regularization techniques. First, we reason formally th...
. A perceptron is trained by a random bit sequence. In comparison to the corresponding classificatio...
Description of Thesis Title: Modification of Internal Representations as a Mechanism for Learning i...
<p>(a) Regression based analysis of neuronal learning. Each row in the colormap shows an individual ...
<p>A SAILnet simulation was performed in which the RFs were initially randomized, and the recurrent ...
Trained models for "What matters in reinforcement learning for tractography". These can be loaded to...
These are the simulation data that underly some of the figures in this paper: https://doi.org/10.110...
(A) Behavior of output neurons (MBONs) during first-order conditioning. During training, a CS+ (blue...
The autoencoder algorithm is a simple but powerful unsupervised method for training neural networks....
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
(A) The task consisted of trials during which noisy stimuli from the MNIST dataset were shown. A tri...
(A) Illustration of the predictability-interpretability trade-off plane. Theoretical models (green) ...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
A, Schematic of a sparsely connected network with 3 hidden layers. The output layer is fully connect...
The data are related to the following article: Antonietti Alberto, Monaco Jessica, D'Angelo Egidio,...
We investigate the effects of neural network regularization techniques. First, we reason formally th...
. A perceptron is trained by a random bit sequence. In comparison to the corresponding classificatio...
Description of Thesis Title: Modification of Internal Representations as a Mechanism for Learning i...
<p>(a) Regression based analysis of neuronal learning. Each row in the colormap shows an individual ...
<p>A SAILnet simulation was performed in which the RFs were initially randomized, and the recurrent ...