2023
DOI: 10.3233/faia230402
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Understanding and Improving Neural Active Learning on Heteroskedastic Distributions

Savya Khosla,
Chew Kin Whye,
Jordan Ash
et al.

Abstract: Models that can actively seek out the best quality training data hold the promise of more accurate, adaptable, and efficient machine learning. Active learning techniques often tend to prefer examples that are the most difficult to classify. While this works well on homogeneous datasets, we find that it can lead to catastrophic failures when performed on multiple distributions with different degrees of label noise or heteroskedasticity. These active learning algorithms strongly prefer to draw from the distribut… Show more

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