1. Identity statement | |
Reference Type | Conference Paper (Conference Proceedings) |
Site | sibgrapi.sid.inpe.br |
Holder Code | ibi 8JMKD3MGPEW34M/46T9EHH |
Identifier | 8JMKD3MGPEW34M/43BHB8L |
Repository | sid.inpe.br/sibgrapi/2020/09.30.23.54 |
Last Update | 2020:09.30.23.54.49 (UTC) administrator |
Metadata Repository | sid.inpe.br/sibgrapi/2020/09.30.23.54.49 |
Metadata Last Update | 2022:06.10.19.41.23 (UTC) administrator |
DOI | 10.1109/SIBGRAPI51738.2020.00010 |
Citation Key | CordeiroCarn:2020:HoTrYo |
Title | A Survey on Deep Learning with Noisy Labels: How to train your model when you cannot trust on the annotations? |
Format | On-line |
Year | 2020 |
Access Date | 2024, Sep. 17 |
Number of Files | 1 |
Size | 494 KiB |
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2. Context | |
Author | 1 Cordeiro, Filipe Rolim 2 Carneiro, Gustavo |
Affiliation | 1 Universidade Federal Rural de Pernambuco 2 University of Adelaide |
Editor | Musse, Soraia Raupp Cesar Junior, Roberto Marcondes Pelechano, Nuria Wang, Zhangyang (Atlas) |
e-Mail Address | filipe.rolim@ufrpe.br |
Conference Name | Conference on Graphics, Patterns and Images, 33 (SIBGRAPI) |
Conference Location | Porto de Galinhas (virtual) |
Date | 7-10 Nov. 2020 |
Publisher | IEEE Computer Society |
Publisher City | Los Alamitos |
Book Title | Proceedings |
Tertiary Type | Tutorial |
History (UTC) | 2020-09-30 23:54:49 :: filipe.rolim@ufrpe.br -> administrator :: 2022-06-10 19:41:23 :: administrator -> filipe.rolim@ufrpe.br :: 2020 |
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3. Content and structure | |
Is the master or a copy? | is the master |
Content Stage | completed |
Transferable | 1 |
Version Type | finaldraft |
Keywords | noisy labels deep learning |
Abstract | Noisy Labels are commonly present in data sets automatically collected from the internet, mislabeled by non- specialist annotators, or even specialists in a challenging task, such as in the medical field. Although deep learning models have shown significant improvements in different domains, an open issue is their ability to memorize noisy labels during training, reducing their generalization potential. As deep learning models depend on correctly labeled data sets and label correctness is difficult to guarantee, it is crucial to consider the presence of noisy labels for deep learning training. Several approaches have been proposed in the literature to improve the training of deep learning models in the presence of noisy labels. This paper presents a survey on the main techniques in literature, in which we classify the algorithm in the following groups: robust losses, sample weighting, sample selection, meta-learning, and combined approaches. We also present the commonly used experimental setup, data sets, and results of the state-of-the-art models. |
Arrangement | urlib.net > SDLA > Fonds > SIBGRAPI 2020 > A Survey on... |
doc Directory Content | access |
source Directory Content | there are no files |
agreement Directory Content | |
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4. Conditions of access and use | |
data URL | http://urlib.net/ibi/8JMKD3MGPEW34M/43BHB8L |
zipped data URL | http://urlib.net/zip/8JMKD3MGPEW34M/43BHB8L |
Language | en |
Target File | Tutorial_ID_4_SIBGRAPI_2020_camara_ready_v2 copy.pdf |
User Group | filipe.rolim@ufrpe.br |
Visibility | shown |
Update Permission | not transferred |
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5. Allied materials | |
Mirror Repository | sid.inpe.br/banon/2001/03.30.15.38.24 |
Next Higher Units | 8JMKD3MGPEW34M/43G4L9S |
Citing Item List | sid.inpe.br/sibgrapi/2020/10.28.20.46 25 sid.inpe.br/banon/2001/03.30.15.38.24 1 |
Host Collection | sid.inpe.br/banon/2001/03.30.15.38 |
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6. Notes | |
Empty Fields | archivingpolicy archivist area callnumber contenttype copyholder copyright creatorhistory descriptionlevel dissemination edition electronicmailaddress group isbn issn label lineage mark nextedition notes numberofvolumes orcid organization pages parameterlist parentrepositories previousedition previouslowerunit progress project readergroup readpermission resumeid rightsholder schedulinginformation secondarydate secondarykey secondarymark secondarytype serieseditor session shorttitle sponsor subject tertiarymark type url volume |
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7. Description control | |
e-Mail (login) | filipe.rolim@ufrpe.br |
update | |
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