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2018, vol. 65, br. 3, str. 1139-1146
The possibility of using data mining in the research of agricultural holdings
(naslov ne postoji na srpskom)
aMinistry of Defense, Budget Department, Belgrade
bSerbian Armed Forces, Belgrade
cMinistry of Defense, Belgrade
dUniverzitet odbrane, Vojna akademija, Beograd
eUniverzitet odbrane, Beograd

e-adresamilunmil68@gmail.com, radovandam78@gmail.com, nedzimam66@gmail.com, kosrad74@gmail.com, curcicmihailo@gmail.com, vladirist72@gmail.com, draganboj74@gmail.com
Ključne reči: agricultural; data mining; unsupervised discriminant analysis; decision tree
(ne postoji na srpskom)
Purpose. The aim of this study was to examine the usefulness and accuracy of Data Mining techniques on the example of testing the presence of impact evaluation of the quality of the land on the level of income of agricultural holdings on the basis of test samples. Methodology. The study was analysis conducted on a random sample for identifying key factors in the research of impact evaluation of the quality of the land on the level of income of agricultural holdings, on a data set of 179 examples, where the input consists of various variables: factor of erosivity, the power of the land, reducing the pH value, presence of organic matter, then target discrete variables with two descriptive values: at a expected yield and real yield. Results and Conclusions. The results obtained from the experiments agree confirmed a physical and chemical factors properties largely determines the classification results.
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O članku

jezik rada: engleski
vrsta rada: pregledni članak
DOI: 10.5937/ekoPolj1803139M
objavljen u SCIndeksu: 25.10.2018.
metod recenzije: dvostruko anoniman
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