DOI:​10.1007/s00477-015-1055-z
Corpus ID: 123633016
RETRACTED ARTICLE: Support vector regression methodology for prediction of output energy in rice production
M. Yousefi, B. Khoshnevisan, +4 authors R. Ahmad
Published 2015
Computer Science

Stochastic Environmental Research and Risk Assessment
The increase in world population has led to a significant increase in food demand throughout the world, so agricultural policy makers in all countries try to estimate their annual food requirements… Expand
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20 Citations
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