How biological attention mechanisms improve task performance in a large-scale visual system model
QH301-705.5
Science
Visual perception
Q
150
R
Models, Biological
004
visual attention
Orientation
convolutional neural networks
gain modulation
Task Performance and Analysis
Medicine
Visual Pathways
Neurophysiology--Mathematical models
Attention
Biology (General)
Neural networks (Neurobiology)
Neuroscience
DOI:
10.7554/elife.38105
Publication Date:
2018-10-01T12:00:44Z
AUTHORS (2)
ABSTRACT
How does attentional modulation of neural activity enhance performance? Here we use a deep convolutional neural network as a large-scale model of the visual system to address this question. We model the feature similarity gain model of attention, in which attentional modulation is applied according to neural stimulus tuning. Using a variety of visual tasks, we show that neural modulations of the kind and magnitude observed experimentally lead to performance changes of the kind and magnitude observed experimentally. We find that, at earlier layers, attention applied according to tuning does not successfully propagate through the network, and has a weaker impact on performance than attention applied according to values computed for optimally modulating higher areas. This raises the question of whether biological attention might be applied at least in part to optimize function rather than strictly according to tuning. We suggest a simple experiment to distinguish these alternatives.
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