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Optimal Labeler Assignment and Sampling for Active Learning in the Presence of Imperfect Labels

About

Active Learning (AL) has garnered significant interest across various application domains where labeling training data is costly. AL provides a framework that helps practitioners query informative samples for annotation by oracles (labelers). However, these labels often contain noise due to varying levels of labeler accuracy. Additionally, uncertain samples are more prone to receiving incorrect labels because of their complexity. Learning from imperfectly labeled data leads to an inaccurate classifier. We propose a novel AL framework to construct a robust classification model by minimizing noise levels. Our approach includes an assignment model that optimally assigns query points to labelers, aiming to minimize the maximum possible noise within each cycle. Additionally, we introduce a new sampling method to identify the best query points, reducing the impact of label noise on classifier performance. Our experiments demonstrate that our approach significantly improves classification performance compared to several benchmark methods.

Pouya Ahadi, Blair Winograd, Camille Zaug, Karunesh Arora, Lijun Wang, Kamran Paynabar• 2025

Related benchmarks

TaskDatasetResultRank
ClassificationStatlog Heart
F1 Score76.9
10
ClassificationSpambase
F1 Score76.8
9
Active Learning Classificationionosphere
F1 Score77.3
5
Active Learning ClassificationConnectionist Bench
F1 Score76.9
5
Active Learning ClassificationSpambase
F1 Score78.5
5
Classificationionosphere
F1 Score77.8
5
ClassificationConnectionist Bench
F1 Score76.9
5
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