(A) Spearman rank correlation coefficients between IT and peak CNN layer similarities are shown for each of two CNN models as a function of retained principal components of the CNN layer activations. The dissimilarities were Euclidean distances. Error bands depict 95% confidence intervals, determined by 10,000 bootstrap samples of the IT neuronal pool. (B) The cumulative proportion of explained variance as a function of principal component number for the Alexnet (black line) and VGG-19 layer (gray line). (C) Pearson correlation coefficients between the mean neural distances and the mean distances of the peak CNN layer (n = 6 mean distances; see Fig 10) as a function of retained principal components. In A and C, the bands represent 95% confi...
Deep learning algorithms (in particular Convolutional Neural Networks, or CNNs) have shown their sup...
End-to-end automatic speech recognition (ASR) models aim to learn a generalised speech representatio...
This thesis explores one of the differences between the visual cortex and deep convolutional neural ...
(A) Spearman rank correlation coefficients between IT and peak CNN layer similarities are shown for ...
Spearman rank correlation coefficients between IT and model layer similarities are shown for each la...
(A, B). Gray curves show the Pearson correlation coefficients between the mean neural distances and ...
<p>Negative values indicate over-prediction of neural similarity, while positive values indicate und...
<p><i>(A; Top Panel)</i> For each model, we illustrate how summary network statistics (Assortativity...
4noDuring the last few decades, artificial neural networks (ANN) have achieved an enormous success i...
The Hebbian neural learning algorithm that implements Principal Component Analysis (PCA) can be exte...
Investigating the level of similarity between two brain networks, resulting from measures of effecti...
Matrices of Euclidean distances for pixel gray-levels (A), the IT neurons (B), and 5 layers of the t...
Regions within the PM and AT networks show high within but not between network activation profile si...
Morphometric correlation networks of cortical thickness, surface area, and gray matter volume have s...
<div><p>(A) Mean neural inter-participant correlation coefficients in pFs (left) and LO (right), aft...
Deep learning algorithms (in particular Convolutional Neural Networks, or CNNs) have shown their sup...
End-to-end automatic speech recognition (ASR) models aim to learn a generalised speech representatio...
This thesis explores one of the differences between the visual cortex and deep convolutional neural ...
(A) Spearman rank correlation coefficients between IT and peak CNN layer similarities are shown for ...
Spearman rank correlation coefficients between IT and model layer similarities are shown for each la...
(A, B). Gray curves show the Pearson correlation coefficients between the mean neural distances and ...
<p>Negative values indicate over-prediction of neural similarity, while positive values indicate und...
<p><i>(A; Top Panel)</i> For each model, we illustrate how summary network statistics (Assortativity...
4noDuring the last few decades, artificial neural networks (ANN) have achieved an enormous success i...
The Hebbian neural learning algorithm that implements Principal Component Analysis (PCA) can be exte...
Investigating the level of similarity between two brain networks, resulting from measures of effecti...
Matrices of Euclidean distances for pixel gray-levels (A), the IT neurons (B), and 5 layers of the t...
Regions within the PM and AT networks show high within but not between network activation profile si...
Morphometric correlation networks of cortical thickness, surface area, and gray matter volume have s...
<div><p>(A) Mean neural inter-participant correlation coefficients in pFs (left) and LO (right), aft...
Deep learning algorithms (in particular Convolutional Neural Networks, or CNNs) have shown their sup...
End-to-end automatic speech recognition (ASR) models aim to learn a generalised speech representatio...
This thesis explores one of the differences between the visual cortex and deep convolutional neural ...