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Statements

Subject Item
n2:RIV%2F00216305%3A26220%2F09%3APU80287%21RIV10-MSM-26220___
rdf:type
skos:Concept n20:Vysledek
dcterms:description
This paper describes an algorithm for tuning weights in rule-based knowledge-basis with un-certainty factors. It eliminates thus expensive and time consuming work of knowledge engi-neer, and eliminates disadvantages of creation knowledge-bases based on neural network. The model of the rule with smooth aggregate functions and the method of learning are presented here. This paper describes an algorithm for tuning weights in rule-based knowledge-basis with un-certainty factors. It eliminates thus expensive and time consuming work of knowledge engi-neer, and eliminates disadvantages of creation knowledge-bases based on neural network. The model of the rule with smooth aggregate functions and the method of learning are presented here.
dcterms:title
Learning algorithm for rule-based knowledge-bases Learning algorithm for rule-based knowledge-bases
skos:prefLabel
Learning algorithm for rule-based knowledge-bases Learning algorithm for rule-based knowledge-bases
skos:notation
RIV/00216305:26220/09:PU80287!RIV10-MSM-26220___
n5:aktivita
n10:S
n5:aktivity
S
n5:dodaniDat
n12:2010
n5:domaciTvurceVysledku
n15:4925645
n5:druhVysledku
n6:D
n5:duvernostUdaju
n19:S
n5:entitaPredkladatele
n18:predkladatel
n5:idSjednocenehoVysledku
323390
n5:idVysledku
RIV/00216305:26220/09:PU80287
n5:jazykVysledku
n17:eng
n5:klicovaSlova
Expert system, automatic knowledge-base creation, rules
n5:klicoveSlovo
n11:automatic%20knowledge-base%20creation n11:rules n11:Expert%20system
n5:kontrolniKodProRIV
[48E83E2B5DDB]
n5:mistoKonaniAkce
FEKT VUT v BrnÄ›
n5:mistoVydani
Brno
n5:nazevZdroje
Proceedings of the 15th conference Student EEICT 2009, Volume 3
n5:obor
n8:BD
n5:pocetDomacichTvurcuVysledku
1
n5:pocetTvurcuVysledku
1
n5:rokUplatneniVysledku
n12:2009
n5:tvurceVysledku
Valenta, Jan
n5:typAkce
n16:CST
n5:zahajeniAkce
2009-04-23+02:00
s:numberOfPages
5
n14:hasPublisher
NOVPRESSs r.o.
n9:isbn
978-80-214-3869-9
n7:organizacniJednotka
26220