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Efficient Per-Example Gradient Computations
classification
📊 stat.ML
cs.LG
keywords
gradientefficientnormcomputationscomputedcomputingdescribesefficiently
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This technical report describes an efficient technique for computing the norm of the gradient of the loss function for a neural network with respect to its parameters. This gradient norm can be computed efficiently for every example.
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