Model for Assessment and Computational Analysis of Some Selected Staple Crops in Nigeria
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National Agency for Science and Engineering Infrastructure
Abstract
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Model has been derived for assessment and computational analysis of some selected staple crops (maize, rice, beans, yam, and cassava) in Nigeria. Data collected were regressed without data corrected for the mean so that all parameters including the intercept could be obtained from the matrix, so that the variance and co-variances could be easily deduced. The significance of the models and estimated parameters were also
analysed using the t-test, Durbin Watson test, Farrar-Glanber test, and Spearman’s Rank correlation coefficient. The results of the analysis shows that the general model:
= −1.655 × 10 + 3.231 + 0.644 + 12.328 + 1.366 + 0.356
is found to predict the total output of the selected crops. The model gave rise to a coefficient of determination of 0.986. The results also show that autocorrelation and multicollinearity exists among the explanatory variables, however the variance of the disturbance error term for each of the explanatory variable have no heteroscedasticity.
[T.O. Aliu, K.O.Obisesan. Model for Assessment and Computational Analysis of Some Selected Staple Crops in Nigeria. Researcher 2015;7(9):68-71]. (ISSN: 1553-9865). http://www.sciencepub.net/researcher.
Keywords
Regression analysis; model; multicollinearity; disturbance error term; heteroscedasticity; staple crops; autocorrelation.