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首页> 外文期刊>Advances in Animal and Veterinary Sciences >Multivariate Adaptive Regression Splines Data Mining Algorithm for Prediction of Body Weight of Hy-Line Silver Brown Commercial Layer Chicken Breed
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Multivariate Adaptive Regression Splines Data Mining Algorithm for Prediction of Body Weight of Hy-Line Silver Brown Commercial Layer Chicken Breed

机译:多变量自适应回归均衡数据挖掘矿物棕色商业层鸡品种体重预测

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Multivariate Adaptive Regression Splines (MARS) data mining algorithm is a non-parametric regression method employed to obtain the prediction of live weight by using body measurements. The study was conducted to investigate the relationship between body weight, linear body measurement traits and the effect of linear body measurement traits on body weight of Hy-Line silver brown commercial layer. A total of one hundred (n= 100) Hy-Line silver brown commercial layers aged 22 weeks were used for body measurements viz; body weight (BW) in kilograms, Beak Length (BK), Body Length (BL), Body Girth (BG), Shank Length (SL) and Wing Length (WL) in centimetres. Furthermore, Pearson correlation and MARS methods were used for data analysis. Correlation results revealed that BW had a negative statistically high significant correlation with WL (r= -0.48**) and BL (r= -0.61**). MARS results developed a non-parametric regression model with coefficient of determination (R2) = 1, adjusted coefficient of determination (R2 adj.)= 1, standard deviation ration (SD ratio) = 0.006, root mean square error (RMSE) = 0.001 and Pearson correlation (r) = 1 between predicted and actual values (P 0.01) of body weight. MARS model revealed that WL and BL had an effect on BW of Hy-Line silver brown commercial layer. The findings suggest that WL and BL had an effect on BW, therefore chicken layer farmers might use WL and BL for selection during breeding to improve BW. In conclusion, MARS models developed in this study might be used by chicken layer farmers for selection during breeding.
机译:多变量自适应回归样条(MARS)数据挖掘算法是用于通过使用体测量来获得实时重量的预测的非参数回归方法。该研究进行了研究体重,线性体测量性状与线体测量性质对Hy线银棕色商业层体重之间的关系。 22周的共有一百(n = 100)Hy-Line银棕色商业层用于身体测量值;体重(BW)以千克,喙长度(BK),体长(BL),体长(BG),柄长(SL)和翅膀长度(WL)厘米。此外,Pearson相关性和MARS方法用于数据分析。相关结果表明,BW与WL(R = -0.48 **)和BL(r = -0.61 **)具有负统计学高显着相关性。火星结果开发了一种具有确定系数(R2)= 1系数的非参数回归模型,调整后的确定系数(R2 adj。)= 1,标准偏差(SD比率)= 0.006,根均线误差(RMSE)= 0.001和Pearson相关性(R)= 1之间的预测和实际值(P <0.01)体重。火星模型显示WL和BL对Hy-Line银棕色商业层的BW有影响。研究结果表明,WL和BL对BW有影响,因此鸡层农民可以在繁殖期间使用WL和BL来选择以改善BW。总之,在本研究中开发的火星模型可能被鸡层农民在繁殖期间选择。

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