Uncert estimates token importance via temporal uncertainty statistics from Dirichlet-modeled class evidence to enable pruning in spiking transformers.
InProceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition
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Uncertainty-Aware Token Importance Estimation in Spiking Transformers
Uncert estimates token importance via temporal uncertainty statistics from Dirichlet-modeled class evidence to enable pruning in spiking transformers.