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Statements

Subject Item
n2:RIV%2F68407700%3A21230%2F05%3A03115273%21RIV06-MSM-21230___
rdf:type
skos:Concept n14:Vysledek
dcterms:description
The task of critical importance is to extract knowledge from an inductive model, once it was built. There are several techniques that can be used for this purpose. Some of them are well known (e.g. generating of math formula from a model) and some of them are to be introduced in this paper. Knowledge extraction (of the system modelled) by means of visualisation of its behaviour for both regression and classification problems will be described. Two methods telling us how to derive feature ranking from inductive model conclude the paper. Není k dispozici The task of critical importance is to extract knowledge from an inductive model, once it was built. There are several techniques that can be used for this purpose. Some of them are well known (e.g. generating of math formula from a model) and some of them are to be introduced in this paper. Knowledge extraction (of the system modelled) by means of visualisation of its behaviour for both regression and classification problems will be described. Two methods telling us how to derive feature ranking from inductive model conclude the paper.
dcterms:title
Není k dispozici Knowledge Extraction from Inductive Models Knowledge Extraction from Inductive Models
skos:prefLabel
Není k dispozici Knowledge Extraction from Inductive Models Knowledge Extraction from Inductive Models
skos:notation
RIV/68407700:21230/05:03115273!RIV06-MSM-21230___
n5:strany
37 ; 44
n5:aktivita
n15:Z
n5:aktivity
Z(MSM6840770012)
n5:dodaniDat
n8:2006
n5:domaciTvurceVysledku
n11:7035586
n5:druhVysledku
n20:D
n5:duvernostUdaju
n12:S
n5:entitaPredkladatele
n18:predkladatel
n5:idSjednocenehoVysledku
526873
n5:idVysledku
RIV/68407700:21230/05:03115273
n5:jazykVysledku
n9:eng
n5:klicovaSlova
Knowledge Extraction, Inductive Modelling, GMDH, GAME, Visualisation, Feature Ranking
n5:klicoveSlovo
n7:GMDH n7:Feature%20Ranking n7:Visualisation n7:Knowledge%20Extraction n7:Inductive%20Modelling n7:GAME
n5:kontrolniKodProRIV
[EF7CF63F351A]
n5:mistoKonaniAkce
Kyjev
n5:mistoVydani
Kyjev
n5:nazevZdroje
Proceedings of the International Workshop on Inductive Modeling IWIM-2005
n5:obor
n21:JC
n5:pocetDomacichTvurcuVysledku
1
n5:pocetTvurcuVysledku
1
n5:rokUplatneniVysledku
n8:2005
n5:tvurceVysledku
Šnorek, Miroslav
n5:typAkce
n10:WRD
n5:zahajeniAkce
2005-07-11+02:00
n5:zamer
n6:MSM6840770012
s:numberOfPages
8
n19:hasPublisher
Akademie věd Ukrajiny, ústav kybernetiky V.M.Gluškova
n16:isbn
966-02-3734-0
n13:organizacniJednotka
21230