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  5. Dual T: Reducing estimation error for transition matrix in label-noise learning
 
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Dual T: Reducing estimation error for transition matrix in label-noise learning
File(s)
2006.07805v3.pdf (811.5 KB)
Author(s)
Yao, Yu
Liu, Tongliang
Han, Bo
Gong, Mingming
Deng, Jiankang
more
Type
preprint
Abstract
The transition matrix, denoting the transition relationship from clean labels to noisy labels, is essential to build statistically consistent classifiers in label-noise learning. Existing methods for estimating the transition matrix rely heavily on estimating the noisy class posterior. However, the estimation error for noisy class posterior could be large due to the randomness of label noise, which would lead the transition matrix to be poorly estimated. Therefore, in this paper, we aim to solve this problem by exploiting the divide-and-conquer paradigm. Specifically, we introduce an intermediate class to avoid directly estimating the noisy class posterior. By this intermediate class, the original transition matrix can then be factorized into the product of two easy-to-estimate transition matrices. We term the proposed method the dual-T estimator. Both theoretical analyses and empirical results illustrate the effectiveness of the dual-T estimator for estimating transition matrices, leading to better classification performances.
Date Issued
2020-06-14
Citation
arXiv, 2020
URI
https://hdl.handle.net/10044/1/119557
DOI
https://www.dx.doi.org/10.48550/arXiv.2006.07805
Journal / Book Title
arXiv
Copyright Statement
© 2020 The Author(s).
Identifier
http://arxiv.org/abs/2006.07805v3
Subjects
cs.LG
cs.LG
stat.ML
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