Learning sparse neural networks via sensitivity-driven regularization
–Neural Information Processing Systems
The ever-increasing number of parameters in deep neural networks poses challenges for memory-limited applications. Regularize-and-prune methods aim at meeting these challenges by sparsifying the network weights. In this context we quantify the output sensitivity to the parameters (i.e.
Neural Information Processing Systems
Mar-16-2026, 17:26:54 GMT
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