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Active Surrogate Estimators: An Active Learning Approach to Label-Efficient Model Evaluation

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arxiv 2202.06881 v2 pith:Y4OWQ3TN submitted 2022-02-14 cs.LG stat.ML

Active Surrogate Estimators: An Active Learning Approach to Label-Efficient Model Evaluation

classification cs.LG stat.ML
keywords activeasesmodelevaluationsurrogateapproachchallengingestimation
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We propose Active Surrogate Estimators (ASEs), a new method for label-efficient model evaluation. Evaluating model performance is a challenging and important problem when labels are expensive. ASEs address this active testing problem using a surrogate-based estimation approach that interpolates the errors of points with unknown labels, rather than forming a Monte Carlo estimator. ASEs actively learn the underlying surrogate, and we propose a novel acquisition strategy, XWED, that tailors this learning to the final estimation task. We find that ASEs offer greater label-efficiency than the current state-of-the-art when applied to challenging model evaluation problems for deep neural networks.

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