Literature DB >> 27046490

Classification with Noisy Labels by Importance Reweighting.

Tongliang Liu, Dacheng Tao.   

Abstract

In this paper, we study a classification problem in which sample labels are randomly corrupted. In this scenario, there is an unobservable sample with noise-free labels. However, before being observed, the true labels are independently flipped with a probability ρ ∈ [0,0.5), and the random label noise can be class-conditional. Here, we address two fundamental problems raised by this scenario. The first is how to best use the abundant surrogate loss functions designed for the traditional classification problem when there is label noise. We prove that any surrogate loss function can be used for classification with noisy labels by using importance reweighting, with consistency assurance that the label noise does not ultimately hinder the search for the optimal classifier of the noise-free sample. The other is the open problem of how to obtain the noise rate ρ. We show that the rate is upper bounded by the conditional probability P(∧Y|X) of the noisy sample. Consequently, the rate can be estimated, because the upper bound can be easily reached in classification problems. Experimental results on synthetic and real datasets confirm the efficiency of our methods.

Year:  2016        PMID: 27046490     DOI: 10.1109/TPAMI.2015.2456899

Source DB:  PubMed          Journal:  IEEE Trans Pattern Anal Mach Intell        ISSN: 0098-5589            Impact factor:   6.226


  9 in total

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2.  Generative-Discriminative Complementary Learning.

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4.  Domain Adaptation with Conditional Transferable Components.

Authors:  Mingming Gong; Kun Zhang; Tongliang Liu; Dacheng Tao; Clark Glymour; Bernhard Schölkopf
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5.  An Efficient and Provable Approach for Mixture Proportion Estimation Using Linear Independence Assumption.

Authors:  Xiyu Yu; Tongliang Liu; Mingming Gong; Kayhan Batmanghelich; Dacheng Tao
Journal:  Conf Comput Vis Pattern Recognit Workshops       Date:  2018-12-17

6.  Label-Noise Robust Domain Adaptation.

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Journal:  Proc Mach Learn Res       Date:  2020-07

7.  Weakly supervised learning of biomedical information extraction from curated data.

Authors:  Suvir Jain; Kashyap R Tumkur; Tsung-Ting Kuo; Shitij Bhargava; Gordon Lin; Chun-Nan Hsu
Journal:  BMC Bioinformatics       Date:  2016-01-11       Impact factor: 3.169

8.  TEMImageNet training library and AtomSegNet deep-learning models for high-precision atom segmentation, localization, denoising, and deblurring of atomic-resolution images.

Authors:  Ruoqian Lin; Rui Zhang; Chunyang Wang; Xiao-Qing Yang; Huolin L Xin
Journal:  Sci Rep       Date:  2021-03-08       Impact factor: 4.379

9.  Learning Using Partially Available Privileged Information and Label Uncertainty: Application in Detection of Acute Respiratory Distress Syndrome.

Authors:  Elyas Sabeti; Joshua Drews; Narathip Reamaroon; Elisa Warner; Michael W Sjoding; Jonathan Gryak; Kayvan Najarian
Journal:  IEEE J Biomed Health Inform       Date:  2021-03-05       Impact factor: 5.772

  9 in total

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