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Published in:   Vol. 3 Issue 2 Date of Publication:   December 2014

Agricultural Data Mining Exploratory and Predictive Model for Finding Agricultural Product Patterns

Gulledmath Sangayya,Yethiraj N.G

Page(s):   49-54 ISSN:   2278-2397
DOI:   10.20894/IJDMTA.102.003.002.002 Publisher:   Integrated Intelligent Research (IIR)


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