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Application of regression methods in estimating technical coefficients of linear programming models

Application of regression methods in estimating technical coefficients of linear programming models

Iranian Journal of Agricultural Sciences 30(3): 439-446

Linear programming models are applied to characteristics of farm enterprises. GLS and RCR methods were employed. The results of the study indicated that with the application of these methods, L.P. models can explain farmers' behaviour better.

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