Unsupervised Estimation of Ensemble Accuracy

November 18, 2023 Β· Declared Dead Β· πŸ› NeurIPS 2023

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Authors Simi Haber, Yonatan Wexler arXiv ID 2311.10940 Category cs.AI: Artificial Intelligence Citations 0 Venue NeurIPS 2023 Last Checked 4 months ago
Abstract
Ensemble learning combines several individual models to obtain a better generalization performance. In this work we present a practical method for estimating the joint power of several classifiers. It differs from existing approaches which focus on "diversity" measures by not relying on labels. This makes it both accurate and practical in the modern setting of unsupervised learning with huge datasets. The heart of the method is a combinatorial bound on the number of mistakes the ensemble is likely to make. The bound can be efficiently approximated in time linear in the number of samples. We relate the bound to actual misclassifications, hence its usefulness as a predictor of performance. We demonstrate the method on popular large-scale face recognition datasets which provide a useful playground for fine-grain classification tasks using noisy data over many classes.
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