<p>Panels A–C (left column) show the average performance of 16 animats calculated in the following way. Every animat completes a number of blocks of 512 trials (the number here varies from 0 to 5), with weights being updated at the end of each trial. We term these “blocks of learning trials”. In these figures, 0 blocks of learning trials means that no learning has taken place. The average reward is calculated independently from the blocks of learning trials. Following a block of learning trials, the animat ...
<p>The connectivity matrix has two sequences which were similar to each other. (A-B) Each single lin...
<p>Left panel: For the first five environments the neurogenesis algorithm reduces the recoding error...
<p><b>A.</b> An example of the variations of the error (blue) and the noiseless error (red) with the...
<p>A. Left: Evolution of escape latency as a function of trials, without lateral connections () and ...
<p>To obtain a better understanding of the difference between the pe...
<p>Figure shows the effect of additive uniformly distributed synaptic ...
<p>We investigate the effect of the reward function shape by changing it ...
<p>(a) Regression based analysis of neuronal learning. Each row in the colormap shows an individual ...
<p>Parameter is the learning rate, turns the model from a strict policy gradient rule to naive Heb...
<p>Figure shows the effect of varying the lateral connection strength ...
Fig A. Schematic diagram of the analysis approach. Step 1: Neural activity is recorded from individu...
<p>A. End-of-trial errors under different learning conditions: no learning, reward-only, punisher-on...
<p>The performance measures in the panels of this figure are averaged over all blocks and subjects. ...
<p>(A): Learning speed when , or . The bar graph and error bars depict sample means and standard dev...
<p>(<b>A</b>) Mean steady training and test accuracies (left and right, respectively; n = 100) of NN...
<p>The connectivity matrix has two sequences which were similar to each other. (A-B) Each single lin...
<p>Left panel: For the first five environments the neurogenesis algorithm reduces the recoding error...
<p><b>A.</b> An example of the variations of the error (blue) and the noiseless error (red) with the...
<p>A. Left: Evolution of escape latency as a function of trials, without lateral connections () and ...
<p>To obtain a better understanding of the difference between the pe...
<p>Figure shows the effect of additive uniformly distributed synaptic ...
<p>We investigate the effect of the reward function shape by changing it ...
<p>(a) Regression based analysis of neuronal learning. Each row in the colormap shows an individual ...
<p>Parameter is the learning rate, turns the model from a strict policy gradient rule to naive Heb...
<p>Figure shows the effect of varying the lateral connection strength ...
Fig A. Schematic diagram of the analysis approach. Step 1: Neural activity is recorded from individu...
<p>A. End-of-trial errors under different learning conditions: no learning, reward-only, punisher-on...
<p>The performance measures in the panels of this figure are averaged over all blocks and subjects. ...
<p>(A): Learning speed when , or . The bar graph and error bars depict sample means and standard dev...
<p>(<b>A</b>) Mean steady training and test accuracies (left and right, respectively; n = 100) of NN...
<p>The connectivity matrix has two sequences which were similar to each other. (A-B) Each single lin...
<p>Left panel: For the first five environments the neurogenesis algorithm reduces the recoding error...
<p><b>A.</b> An example of the variations of the error (blue) and the noiseless error (red) with the...