2024
DOI: 10.3390/e26020129
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Deep Individual Active Learning: Safeguarding against Out-of-Distribution Challenges in Neural Networks

Shachar Shayovitz,
Koby Bibas,
Meir Feder

Abstract: Active learning (AL) is a paradigm focused on purposefully selecting training data to enhance a model’s performance by minimizing the need for annotated samples. Typically, strategies assume that the training pool shares the same distribution as the test set, which is not always valid in privacy-sensitive applications where annotating user data is challenging. In this study, we operate within an individual setting and leverage an active learning criterion which selects data points for labeling based on minimiz… Show more

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