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Statistical Modelling for Pre-Harvest Forecast:An Illustration with Rose


Affiliations
1 Section of Economics and Statistics, Indian Institute of Horticultural Research, Hessaraghatta Lake Post, Bangalore-560 089, India
 

Crop yield forecast plays a vital role in arriving at pre-harvest yield estimate of a standing crop and to identify the stage at which reliable forecasting could be made before final harvest. In this paper, an attempt has been made to apply the regression technique for prediction of yield in rose. Rose, is an important flower crop not only for internal market but is also intended for export, and since it shrivels, estimation of yield of a standing crop before its actual harvest is essential. Based on results a model was developed, which showed that information from the first two pickings of a standing crop could be used to forecast rose yield to an extent of 77% two months before final harvest. It is also suggested to have a minimum sample size of 20 % to develop such a forecast model.

Keywords

Goodness of Fit Statistics, Statistical Modelling, Yield Forecast.
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  • Statistical Modelling for Pre-Harvest Forecast:An Illustration with Rose

Abstract Views: 193  |  PDF Views: 106

Authors

K. S. Shamasundaran
Section of Economics and Statistics, Indian Institute of Horticultural Research, Hessaraghatta Lake Post, Bangalore-560 089, India
R. Yenugopalan
Section of Economics and Statistics, Indian Institute of Horticultural Research, Hessaraghatta Lake Post, Bangalore-560 089, India

Abstract


Crop yield forecast plays a vital role in arriving at pre-harvest yield estimate of a standing crop and to identify the stage at which reliable forecasting could be made before final harvest. In this paper, an attempt has been made to apply the regression technique for prediction of yield in rose. Rose, is an important flower crop not only for internal market but is also intended for export, and since it shrivels, estimation of yield of a standing crop before its actual harvest is essential. Based on results a model was developed, which showed that information from the first two pickings of a standing crop could be used to forecast rose yield to an extent of 77% two months before final harvest. It is also suggested to have a minimum sample size of 20 % to develop such a forecast model.

Keywords


Goodness of Fit Statistics, Statistical Modelling, Yield Forecast.