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(Using Yield functions)
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* Pay attention to the fact that the weather variables may play a secondary rôle, and ignore them altogether. For coffee in Mexico, it was shown that the most important variables influencing yields included altitude above sea level, number of weeding rounds, age of the plantation and type of smallholding (Becerril- Roman and Ortega-Obregon, 1979); * Pay attention to the fact that the weather variables may play a secondary rôle, and ignore them altogether. For coffee in Mexico, it was shown that the most important variables influencing yields included altitude above sea level, number of weeding rounds, age of the plantation and type of smallholding (Becerril- Roman and Ortega-Obregon, 1979);
* After removing the trend, plot de-trended yield against each individual variable to see the shape of the regression curve and the strength of the statistical correlation, if any relation is clearly non-linear, add a quadratic term16 to account for curvilinearity; * After removing the trend, plot de-trended yield against each individual variable to see the shape of the regression curve and the strength of the statistical correlation, if any relation is clearly non-linear, add a quadratic term16 to account for curvilinearity;
-* As far as possible, ignore redundant variables or use the regression through a principal component analysis. Always prefer techniques with (manual or+* As far as possible, ignore redundant variables or use the regression through a principal component analysis. Always prefer techniques with (manual or “automatic”) addition of variables to techniques with deletion of variables;
-“automatic”) addition of variables to techniques with deletion of variables;+* Use techniques to ensure the stability of the coefficients (randomly or systematically eliminating up to 50% of the observation points of the time series);
-* Use techniques to ensure the stability of the coefficients (randomly or systematically eliminating up to 50% of the observation points of the time+
-series);+
* Use jack-knifing to determine the actual accuracy of the method; * Use jack-knifing to determine the actual accuracy of the method;
* Yield functions typically “expire” after a couple of years, after which they need recalibrating. A yield function older than 3 years is definitely worthless! * Yield functions typically “expire” after a couple of years, after which they need recalibrating. A yield function older than 3 years is definitely worthless!

Revision as of 10:40, 22 September 2006

Using Yield functions

The present note tries to summarise some of the considerations which the crop forecaster should keep in mind when deriving multiple regression equations (so-called Yield Functions) which will eventually be used for forecasting crop yields. The process by which the coefficients of a yield function are derived are known as calibration15. The rules below are purely empirical or based on common sense:

Some additional advice


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