Lightweight Probabilistic Deep Networks

Even though probabilistic treatments of neural networks have a long history, they have not found widespread use in practice. Sampling approaches are often too slow already for simple networks. The size of the inputs and the depth of typical CNN architectures in computer vision only compound this pro...

Full description

Saved in:
Bibliographic Details
Published in2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition pp. 3369 - 3378
Main Authors Gast, Jochen, Roth, Stefan
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.06.2018
Subjects
Online AccessGet full text

Cover

Loading…
Abstract Even though probabilistic treatments of neural networks have a long history, they have not found widespread use in practice. Sampling approaches are often too slow already for simple networks. The size of the inputs and the depth of typical CNN architectures in computer vision only compound this problem. Uncertainty in neural networks has thus been largely ignored in practice, despite the fact that it may provide important information about the reliability of predictions and the inner workings of the network. In this paper, we introduce two lightweight approaches to making supervised learning with probabilistic deep networks practical: First, we suggest probabilistic output layers for classification and regression that require only minimal changes to existing networks. Second, we employ assumed density filtering and show that activation uncertainties can be propagated in a practical fashion through the entire network, again with minor changes. Both probabilistic networks retain the predictive power of the deterministic counterpart, but yield uncertainties that correlate well with the empirical error induced by their predictions. Moreover, the robustness to adversarial examples is significantly increased.
AbstractList Even though probabilistic treatments of neural networks have a long history, they have not found widespread use in practice. Sampling approaches are often too slow already for simple networks. The size of the inputs and the depth of typical CNN architectures in computer vision only compound this problem. Uncertainty in neural networks has thus been largely ignored in practice, despite the fact that it may provide important information about the reliability of predictions and the inner workings of the network. In this paper, we introduce two lightweight approaches to making supervised learning with probabilistic deep networks practical: First, we suggest probabilistic output layers for classification and regression that require only minimal changes to existing networks. Second, we employ assumed density filtering and show that activation uncertainties can be propagated in a practical fashion through the entire network, again with minor changes. Both probabilistic networks retain the predictive power of the deterministic counterpart, but yield uncertainties that correlate well with the empirical error induced by their predictions. Moreover, the robustness to adversarial examples is significantly increased.
Author Roth, Stefan
Gast, Jochen
Author_xml – sequence: 1
  givenname: Jochen
  surname: Gast
  fullname: Gast, Jochen
– sequence: 2
  givenname: Stefan
  surname: Roth
  fullname: Roth, Stefan
BookMark eNotjk1Lw0AUAFdRsNacPXjJzVPi26-Xt0eJ9QOCFiley-7mRVdrU5JA8d-r6GXmNsypONr2WxbiXEIpJbir-mX5XCqQVAJoaw9E5iqSVhOiUeAOxUwC6gKddCciG8d3AFBImoydicsmvb5Ne_5lvhz64EPapHFKMb9h3uWPPO374WM8E8ed34yc_XsuVreLVX1fNE93D_V1UyRZ2angFjoXKk0sfTTSBhWN6yhSK0khdq0jCt6g6doQURkbyDqvEbCFqKyei4u_bGLm9W5In374WpOtfma1_ga4zEJL
CODEN IEEPAD
ContentType Conference Proceeding
DBID 6IE
6IH
CBEJK
RIE
RIO
DOI 10.1109/CVPR.2018.00355
DatabaseName IEEE Electronic Library (IEL) Conference Proceedings
IEEE Proceedings Order Plan (POP) 1998-present by volume
IEEE Xplore All Conference Proceedings
IEEE/IET Electronic Library (IEL)
IEEE Proceedings Order Plans (POP) 1998-present
DatabaseTitleList
Database_xml – sequence: 1
  dbid: RIE
  name: IEEE Electronic Library (IEL)
  url: https://proxy.k.utb.cz/login?url=https://ieeexplore.ieee.org/
  sourceTypes: Publisher
DeliveryMethod fulltext_linktorsrc
Discipline Applied Sciences
EISBN 9781538664209
1538664208
EISSN 1063-6919
EndPage 3378
ExternalDocumentID 8578453
Genre orig-research
GroupedDBID 6IE
6IH
6IL
6IN
AAWTH
ABLEC
ADZIZ
ALMA_UNASSIGNED_HOLDINGS
BEFXN
BFFAM
BGNUA
BKEBE
BPEOZ
CBEJK
CHZPO
IEGSK
IJVOP
OCL
RIE
RIL
RIO
ID FETCH-LOGICAL-i175t-ed0f9b738e1ac415b2c49f8c8d18266fd988ba464fdbc6245b859a3606d0c253
IEDL.DBID RIE
IngestDate Wed Aug 27 02:52:16 EDT 2025
IsPeerReviewed false
IsScholarly true
Language English
LinkModel DirectLink
MergedId FETCHMERGED-LOGICAL-i175t-ed0f9b738e1ac415b2c49f8c8d18266fd988ba464fdbc6245b859a3606d0c253
PageCount 10
ParticipantIDs ieee_primary_8578453
PublicationCentury 2000
PublicationDate 2018-Jun
PublicationDateYYYYMMDD 2018-06-01
PublicationDate_xml – month: 06
  year: 2018
  text: 2018-Jun
PublicationDecade 2010
PublicationTitle 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition
PublicationTitleAbbrev CVPR
PublicationYear 2018
Publisher IEEE
Publisher_xml – name: IEEE
SSID ssj0002683845
ssj0003211698
Score 2.5137076
Snippet Even though probabilistic treatments of neural networks have a long history, they have not found widespread use in practice. Sampling approaches are often too...
SourceID ieee
SourceType Publisher
StartPage 3369
SubjectTerms Bayes methods
Computer architecture
Neural networks
Probabilistic logic
Supervised learning
Uncertainty
Title Lightweight Probabilistic Deep Networks
URI https://ieeexplore.ieee.org/document/8578453
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV3PS8MwFH5sO3mauom_6UHwYre1SdPkPB1D3BgyZbfRJC8gwjZci-Bfb15bp4gHb22gkDQt733vfd8XgCvNfS6UeaTqs18VcsNtKP1ISD2oSCepc5KEwpOpGD_x-0WyaMDNTguDiCX5DHt0Wfby7doUVCrrS_958YQ1oemBW6XV2tVTYiGZrDtkdM88shFK1m4-0UD1h8-zR-JyEXmSkbTvx3EqZTQZtWHyNY-KRPLaK3LdMx-_LBr_O9F96H7r9oLZLiIdQANXh9CuE82g_o23Hbh-IEj-XlZF6QFd2uySY3Nwi7gJphU3fNuF-ehuPhyH9YkJ4YtPA_IQ7cApnTKJUWZ8aNax4cpJIy3BCOGsklJnXHBntRExT7RMVMY8iLEDEyfsCFqr9QqPIciymAt0EZLaSUuuOUvRpUlkheQc3Ql0aNnLTeWJsaxXfPr38Bns0YuvKFbn0MrfCrzwwTzXl-UufgIILZzC
linkProvider IEEE
linkToHtml http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV1dS8MwFL3M-aBPUzfx2z4IvthtbT6WPk9l6jaGTNnbaJIbEGEbrkPw15vb1inig29toJCQlHM_zjkBuNDcx0Kpz1R99JuE3HAbKj8SUg8q0qLjnCKh8GAoe0_8fiImFbhaa2EQMSefYZMe816-nZsVlcpayh8vLtgGbHrcF3Gh1lpXVGKpmCp7ZPTOfG4jE1X6-UTtpNV9Hj0Sm4vok4zEfT8uVMnx5LYGg6-ZFDSS1-Yq003z8cuk8b9T3YHGt3IvGK0xaRcqONuDWhlqBuWPvKzDZZ-S8ve8Lkof6Nxolzybg2vERTAs2OHLBoxvb8bdXljemRC--EAgC9G2XaI7TGGUGg_OOjY8ccooS4mEdDZRSqdccme1kTEXWokkZT6NsW0TC7YP1dl8hgcQpGnMJboISe-kFdecddB1RGSl4hzdIdRp2dNF4YoxLVd89PfwOWz1xoP-tH83fDiGbdqEgnB1AtXsbYWnHtozfZbv6CdsoqAM
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Abook&rft.genre=proceeding&rft.title=2018+IEEE%2FCVF+Conference+on+Computer+Vision+and+Pattern+Recognition&rft.atitle=Lightweight+Probabilistic+Deep+Networks&rft.au=Gast%2C+Jochen&rft.au=Roth%2C+Stefan&rft.date=2018-06-01&rft.pub=IEEE&rft.eissn=1063-6919&rft.spage=3369&rft.epage=3378&rft_id=info:doi/10.1109%2FCVPR.2018.00355&rft.externalDocID=8578453