Linear layer and Generalized Regression computational intelligence models for predicting shelf life of processed cheese
Goyal Sumit and
Goyal Gyanendra Kumar
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Goyal Sumit: National Dairy Research Institute
Goyal Gyanendra Kumar: National Dairy Research Institute
Russian Journal of Agricultural and Socio-Economic Sciences, 2012, vol. 3, issue 3, 28-32
Abstract:
This paper highlights the significance of computational intelligence models for predicting shelf life of processed cheese stored at 7-8oC. Linear Layer and Generalized Regression models were developed with input parameters: Soluble nitrogen, pH, Standard plate count, Yeast & mould count, Spores, and sensory score as output parameter. Mean Square Error, Root Mean Square Error, Coefficient of Determination and Nash Sutcliffo Coefficient were used in order to compare the prediction ability of the models. The study revealed that Generalized Regression computational intelligence models are quite effective in predicting the shelf life of processed cheese stored at 7-8oC.
Date: 2012
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Persistent link: https://EconPapers.repec.org/RePEc:scn:031261:14030135
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