回归树分析预测南非山羊的体重在Syferkuil农场,南非的魔羯座区

Thobela Louis Tyasi, Amanda Tshegofatso Mkhonto, M. Mathapo, K. Molabe
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引用次数: 1

摘要

回归树是一种数据挖掘算法方法,它包含一系列的计算,从收集的数据中创建一个模型。本研究旨在建立基于马肩高(WH)、胸骨高度(SH)、体长(BL)、胸围(HG)和臀高(RH)等生物特征的体重估算模型。研究共使用了83只(n = 83) 3个月及以上的南非非描述性本地山羊(54只母山羊和29只公山羊)。皮尔森吗?采用s相关性和分类回归树(CART)作为统计技术进行数据分析。相关结果表明,公、母山羊的体重与所有生物特征性状均呈极显著正相关(P < 0.01),其中母山羊的体重与WH呈极显著正相关(r = 0.82),公山羊的体重与BL呈极显著正相关(r = 0.83)。CART模型结果表明,体重均值为29.868 kg (kg),体重对体重的影响最大,SH、RH次之,年龄对体重的影响最小。这项研究表明,BL、SH和RH可能被南非非描述性山羊使用。作为饲养时提高动物体重的选择标准。需要在更多样本量的南非非特征性山羊或其他山羊品种中使用CART进行更全面的研究和实验,以预测体重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regression tree analysis to predict body weight of South African non-descript goats raised at Syferkuil farm, Capricorn District of South Africa
Regression tree is the data mining algorithm method which contains a series of calculations that creates a model from collected data. Present study aimed to develop model to estimate body weight (BW) from biometric traits viz. withers height (WH), sternum height (SH), body length (BL), heart girth (HG) and rump height (RH). A total of eighty-three (n = 83) South African non-descript indigenous goats ( 54 females and 29 males) aged three months and above were used in the study. Pearson?s correlations and classification and regression tree (CART) as statistical techniques were used for data analysis. Correlation results indicated that there was a positive highly statistical significant (P < 0.01) correlation between BW and all biometric traits in both males and females, the positive highly statistical significant correlation was observed between BW and WH (r = 0.82) in female goats while in males the highest positive statistical significant correlation was detected between BW and BL (r = 0.83). CART model indicated that the BW mean was 29.868 kilograms (kg) as dependent variable and BL had the highest remarkable role in BW followed by SH, RH while the age had the least remarkable role in BW. This study suggests that BL, SH and RH might be used by South African non-descript goats? farmers as a selection criterion during breeding to improve BW of animal. More completive studies and experiments need to be done using CART to predict BW in more sample size of South African nondescript goats or other goat breeds.
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