ASE2024
Constructing Surrogate Models in Machine Learning Using Combinatorial Testing and Active Learning
Sunny Shree, Krishna Khadka, Yu Lei, Raghu N. Kacker, D. Richard Kuhn
1 citation
Abstract
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.