You can't handle the (dirty) truth: Data-centric insights improve pseudo-labeling
Pseudo-labeling is a popular semi-supervised learning technique to leverage unlabeled data when labeled samples are scarce. The generation and selection of pseudo-labels heavily rely on labeled data. Existing approaches implicitly assume that the labeled data is gold standard and 'perfect'...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
19.06.2024
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Subjects | |
Online Access | Get full text |
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Summary: | Pseudo-labeling is a popular semi-supervised learning technique to leverage
unlabeled data when labeled samples are scarce. The generation and selection of
pseudo-labels heavily rely on labeled data. Existing approaches implicitly
assume that the labeled data is gold standard and 'perfect'. However, this can
be violated in reality with issues such as mislabeling or ambiguity. We address
this overlooked aspect and show the importance of investigating labeled data
quality to improve any pseudo-labeling method. Specifically, we introduce a
novel data characterization and selection framework called DIPS to extend
pseudo-labeling. We select useful labeled and pseudo-labeled samples via
analysis of learning dynamics. We demonstrate the applicability and impact of
DIPS for various pseudo-labeling methods across an extensive range of
real-world tabular and image datasets. Additionally, DIPS improves data
efficiency and reduces the performance distinctions between different
pseudo-labelers. Overall, we highlight the significant benefits of a
data-centric rethinking of pseudo-labeling in real-world settings. |
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DOI: | 10.48550/arxiv.2406.13733 |