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Training a Single Sigmoidal Neuron is Hard

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    SYSNO ASEP0404583
    Document TypeJ - Journal Article
    R&D Document TypeJournal Article
    Subsidiary JČlánek ve WOS
    TitleTraining a Single Sigmoidal Neuron is Hard
    Author(s) Šíma, Jiří (UIVT-O) RID, SAI, ORCID
    Source TitleNeural Computation - ISSN 0899-7667
    Roč. 14, č. 11 (2002), s. 2709-2729
    Number of pages20 s.
    Languageeng - English
    CountryUS - United States
    Keywordssigmoidal neuron ; loading problem ; NP-hardness
    Subject RIVBA - General Mathematics
    R&D ProjectsLN00A056 GA MŠMT - Ministry of Education, Youth and Sports (MEYS)
    UT WOS000178882900009
    EID SCOPUS0036835735
    DOI10.1162/089976602760408035
    AnnotationWe first present a brief survey of hardness results for training feedforward neural networks. These results are then completed by the proof that the simplest architecture containing only a single neuron that applies a sigmoidal activation function \sigma:R-->[\alpha,ta], satisfying certain natural axioms, e.g. the standard (logistic) sigmoid or saturated-linear function, to the weighted sum of $n$ inputs is hard to train. In particular, the problem of finding the weights of such a unit that minimize...
    WorkplaceInstitute of Computer Science
    ContactTereza Šírová, sirova@cs.cas.cz, Tel.: 266 053 800
    Year of Publishing2003

Number of the records: 1  

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