Elucidating Robust Learning with Uncertainty-Aware Corruption Pattern Estimation
Robust learning methods aim to learn a clean target distribution from noisy and corrupted training data where a specific corruption pattern is often assumed a priori. Our proposed method can not only successfully learn the clean target distribution from a dirty dataset but also can estimate the unde...
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Zusammenfassung: | Robust learning methods aim to learn a clean target distribution from noisy
and corrupted training data where a specific corruption pattern is often
assumed a priori. Our proposed method can not only successfully learn the clean
target distribution from a dirty dataset but also can estimate the underlying
noise pattern. To this end, we leverage a mixture-of-experts model that can
distinguish two different types of predictive uncertainty, aleatoric and
epistemic uncertainty. We show that the ability to estimate the uncertainty
plays a significant role in elucidating the corruption patterns as these two
objectives are tightly intertwined. We also present a novel validation scheme
for evaluating the performance of the corruption pattern estimation. Our
proposed method is extensively assessed in terms of both robustness and
corruption pattern estimation through a number of domains, including computer
vision and natural language processing. |
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DOI: | 10.48550/arxiv.2111.01632 |