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Innovations in Neural Information Paradigms and Applications

  1. 1.
    SYSNO ASEP0328492
    Document TypeM - Monograph Chapter
    R&D Document TypeMonograph Chapter
    TitleEstimates of Model Complexity in Neural-Network Learning
    TitleOdhady modelové složitosti při učení neuronových sítí
    Author(s) Kůrková, Věra (UIVT-O) RID, SAI, ORCID
    Source TitleInnovations in Neural Information Paradigms and Applications. - Berlin : Springer, 2009 / Bianchini M. ; Maggini M. ; Scarselli F. ; Jain L.C - ISBN 978-3-642-04002-3
    Pagess. 97-111
    Number of pages15 s.
    Number of copy500
    Number of pages294
    Languageeng - English
    CountryDE - Germany
    Keywordsmodel complexity ; neural networks ; learning from data
    Subject RIVIN - Informatics, Computer Science
    R&D Projects1M0567 GA MŠMT - Ministry of Education, Youth and Sports (MEYS)
    CEZAV0Z10300504 - UIVT-O (2005-2011)
    UT WOS000271231000005
    EID SCOPUS70350227066
    DOI10.1007/978-3-642-04003-0_5
    AnnotationModel complexity in neural-network learning is investigated using tools from nonlinear approximation and integration theory. Estimates of network complexity are obtained from inspection of upper bounds on convergence of minima of error functionals over networks with an increasing number of units to their global minima. The estimates are derived using integral transforms induced by computational units. The role of dimensionality of training data defining error functionals is discussed.
    WorkplaceInstitute of Computer Science
    ContactTereza Šírová, sirova@cs.cas.cz, Tel.: 266 053 800
    Year of Publishing2010
Number of the records: 1  

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