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Statements

Subject Item
n2:RIV%2F67985807%3A_____%2F02%3A06020210%21RIV%2F2003%2FAV0%2FA06003%2FN
rdf:type
n7:Vysledek skos:Concept
dcterms:description
We present various learning methods for RBF networks. The standard gradient-based learning is augmented by the weighted norm adaptation. The three-step learning algorithm uses different unsupervised learning algorithms for setting the centroids. Two possible combinations with genetic learning algorithm are considered as well. All learning variants are thoroughly compared on two benchmark tasks. We present various learning methods for RBF networks. The standard gradient-based learning is augmented by the weighted norm adaptation. The three-step learning algorithm uses different unsupervised learning algorithms for setting the centroids. Two possible combinations with genetic learning algorithm are considered as well. All learning variants are thoroughly compared on two benchmark tasks.
dcterms:title
Learning of Radial Basis Function Networks: Experimental Results. Learning of Radial Basis Function Networks: Experimental Results.
skos:prefLabel
Learning of Radial Basis Function Networks: Experimental Results. Learning of Radial Basis Function Networks: Experimental Results.
skos:notation
RIV/67985807:_____/02:06020210!RIV/2003/AV0/A06003/N
n3:strany
241;246
n3:aktivita
n11:P n11:Z
n3:aktivity
P(GA201/01/1192), P(IAB1030006), Z(AV0Z1030915)
n3:dodaniDat
n13:2003
n3:domaciTvurceVysledku
n4:8926050
n3:druhVysledku
n6:D
n3:duvernostUdaju
n16:S
n3:entitaPredkladatele
n18:predkladatel
n3:idSjednocenehoVysledku
651642
n3:idVysledku
RIV/67985807:_____/02:06020210
n3:jazykVysledku
n8:eng
n3:klicovaSlova
radial basis function networks; hybrid learning; soft computing
n3:klicoveSlovo
n15:soft%20computing n15:radial%20basis%20function%20networks n15:hybrid%20learning
n3:kontrolniKodProRIV
[2741FB3C2923]
n3:mistoKonaniAkce
Rethymno [GR]
n3:mistoVydani
N/A
n3:nazevZdroje
Recent Advances in Computers, Computing and Communications.
n3:obor
n12:BA
n3:pocetDomacichTvurcuVysledku
1
n3:pocetTvurcuVysledku
1
n3:pocetUcastnikuAkce
0
n3:pocetZahranicnichUcastnikuAkce
0
n3:projekt
n9:GA201%2F01%2F1192 n9:IAB1030006
n3:rokUplatneniVysledku
n13:2002
n3:tvurceVysledku
Neruda, Roman
n3:typAkce
n21:WRD
n3:zahajeniAkce
2002-07-07+02:00
n3:zamer
n17:AV0Z1030915
s:numberOfPages
6
n20:hasPublisher
World Scientific and Engineering Society Press
n10:isbn
960-8052-62-9