Abstract
Recently, various methods on test input selection for deep neural network (TIS-DNN) have been proposed. These methods can effectively reduce the labeling cost by selecting a subset from the original test inputs, which can still accurately estimate the performance (such as accuracy) of the target DNN models.
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