Analysis of Variables Affecting Carcass Weight of White Turkeys by Regression Analysis Based on Factor Analysis Scores and Ridge Regression
Date
2018Author
Celik, S. and Sengul, T. and Sogut, B. and Inci, H. and Sengul, A. Y.
and Kayaokay, A. and Ayasan, T.
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In this study, the influence of carcass parts weights (thigh, breast,
wing, back weight, gizzard, heart, and feet) on whole carcass weight of
white turkeys (Big-6) was analyzed by regression analysis based on ridge
regression and factor analysis scores. For this purpose, a total of 30
turkey carcasses of 15 males and 15 females with 17 weeks of age, were
used. To determine the carcass weight (CW), thigh weight (TW), breast
weight (BRW), wing weight (WW), back weight (BW), gizzard weight (GW),
heartweight (HW), and feet weight (FW) were used. In the ridge
regression model, since the Variance Inflation Factor (VIF) values of
the variables were less than 10, the multicollinearity problem was
eliminated. Furthermore, R-2=0.988 was obtained in the ridge regression
model. Since the eigenvalues of the two variables predicted by factor
analysis scores were greater than 1, the model can be explained by two
factors. The variance explained by two factors constitutes 88.80\% of
the total variance. The regression equation was statistically
significant (p<0.01). In the regression equation, two factors obtained
by using factor analysis scores were independent variables and
standardized carcass weight was considered as dependent variable. In the
regression model created by factor analysis scores, the Variance
Inflation Factor values were 1 and R-2=0.966. Both regression models
were found to be suitable for predicting carcass weight of turkeys.
However, the ridge regression method, which presented higher R-2 value,
has been shown to better explain the carcass weight.
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