TITLE

Impact of Datamining Techniques in Forecasting Plant Disease

AUTHOR(S)
Rajalakshmi, R.; Uma, M.; Thangadurai, K.; Punithavalli, M.
PUB. DATE
November 2012
SOURCE
International Journal of Advanced Research in Computer Science;Nov/Dec2012, Vol. 3 Issue 6, p187
SOURCE TYPE
Academic Journal
DOC. TYPE
Article
ABSTRACT
In this article a challenge has been made to analysis the explore studies on significance of data mining techniques in the field of agriculture. Couple of the techniques, such as decision algorithms ID3, the CHAID algorithm, C4.5, and Cluster analysis applied in the field of agriculture was presented. Data mining in application of agriculture is a relatively new approach for forecasting / predicting of fungal diseases of agricultural crop. This article explores the applications of data mining techniques in the field of farming and similar sciences.
ACCESSION #
91876758

 

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