2025, Vol. 10, Issue 6, Part A
Predictive modelling of apple area, production, and productivity in Srinagar: A case study
Author(s): Masroor Majid, Nageena Nazir, SA Mir, Imran Khan, FA Shaheen and MK Sharma
Abstract: This study evaluates and compares the performance
of linear and non-linear regression models to analyse trends and predict key
metrics—namely area, production, and productivity—of apple cultivation in
Srinagar over a 25-year period (1995 to 2019). Four models were examined:
Linear, Logistic, Monomolecular, and Exponential. Their goodness of fit was
assessed using multiple statistical indicators, including R
2, Mean
Squared Error (MSE), Root Mean Squared Error (RMSE), Mean Absolute Error (MAE),
Akaike Information Criterion (AIC), the Run Test, and the Shapiro-Wilk Test.
The findings reveal that non-linear models, especially Logistic and
Monomolecular, outperform the linear model with higher R
2 values and
lower error metrics across all parameters. The Logistic model proves most
effective for estimating area and productivity, whereas the Monomolecular model
excels in forecasting production. Furthermore, the comparison between actual
and estimated values demonstrates the robustness of these models in capturing
historical patterns and predicting future changes. Specifically, the Logistic model
provides reliable estimations for maximum area and productivity with minimal
deviations from observed data, while the Monomolecular model captures
production trends with high precision. These results offer valuable insights
for policy planning and for promoting sustainable apple cultivation practices
in the region. Future research should explore integrating environmental and
economic variables to further refine these models.
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How to cite this article:
Masroor Majid, Nageena Nazir, SA Mir, Imran Khan, FA Shaheen, MK Sharma. Predictive modelling of apple area, production, and productivity in Srinagar: A case study. Int J Stat Appl Math 2025;10(6):01-06.