ASSS uses an adversarial selector and Gumbel-Softmax relaxation to retain 98.9% task performance with only 30% of the data by preferentially keeping boundary samples.
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ASSS: A Differentiable Adversarial Framework for Task-Aware Data Reduction
ASSS uses an adversarial selector and Gumbel-Softmax relaxation to retain 98.9% task performance with only 30% of the data by preferentially keeping boundary samples.