PREDICTION OF BODY WEIGHT OF NIGERIAN NON-DESCRIPT GOATS FROM MORPHOMETRIC TRAITS USING CLASSIFICATION AND REGRESSION TREE MODEL

I Mallam, Y.I. HUSSAINI, I.D. ALHASSAN, E.A. NEGEDU, W.H. KEHINDE, W.H. KEHINDE, V. GUGONG
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Abstract

This study was conducted to evaluate the relationship between body weight and eleven (11) morphometric traits (body weight, body length, height at withers, rump height, chest girth, hind leg, fore leg, head length, ear length, neck length, and tail length) of non-descript goats using classification and regression tree technique. The data were generated from 120 non-descript goats randomly selected from different herds in three LGA areas of Kaduna State, North West Nigeria. Pearson’s moment correlation (r) between body weight and morphometric traits ranged from low to high values (r = 0.21-0.97; P≤0.05, P≤0.01). Based on the importance of the independent variables in predicting the body weight of goats, six body measurements namely; chest girth, body length, rump height, height at withers, head length and neck length were found to be more efficient. Thus, they were the variables entered to obtain the optimal regression tree. Among these six variables, chest circumference was found to be the primary splitting variable; and together with neck length accounted for about 84.20% of the variation in body weight. The regression tree analysis indicated that animals with chest circumference > 60.00cm and neck length >15cm could be expected to have higher body weights. This information could be exploited by livestock producers and researchers for determining the feed amount, drug dose, and market price of an animal, management, selection and genetic improvement of Nigerian non-descript goats.
利用分类回归树模型从形态计量性状预测尼日利亚非描述性山羊体重
本研究采用分类回归树技术评价了非描述性山羊体重与11个形态计量性状(体重、体长、肩高、臀高、胸围、后腿、前腿、头长、耳长、颈长和尾长)之间的关系。数据来自尼日利亚西北部卡杜纳州三个LGA地区随机选择的120只无特征山羊。体重与形态性状之间的Pearson 's矩相关系数(r)从低到高不等(r = 0.21-0.97;P≤0.05,P≤0.01)。根据自变量在预测山羊体重中的重要性,六种体量值分别为;胸围、身长、臀高、肩高、头长和脖子长被发现更有效。因此,它们是为获得最优回归树而输入的变量。在这6个变量中,胸围是主要的分裂变量;与颈长一起,约占体重变化的84.20%。回归树分析表明胸围>60.00cm,颈长15cm,体重可能会更高。牲畜生产者和研究人员可以利用这些信息来确定动物的饲料量、药物剂量和市场价格,以及尼日利亚非描述性山羊的管理、选择和遗传改良。
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