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Lameness prediction in Karan Fries cross-bred cows using decision tree models

机译:基于决策树模型的Karan Fries杂交母牛的足预测

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Decision tree algorithms were used to develop predictive models for lameness based on percent of body weight distribution to individual legs of Karan Fries cross bred cows. To develop prediction model, 589 Karan Fries cows data were recorded for the health status (lame or healthy) as target variable and other non-genetic variables such as percent of body weight distributed to individual legs (using load cell platform), parity (1 to 10), status of pregnancy (<;90days, 91-180days, >181days and non-pregnant), status of lactation (<;60days, 61-120days, >121days and dry), and daily milk yield were used as input variable. The predictive models were optimized based on classification of health status as well as average square error (ASE) to predict lameness in cows. The performance of both the models were evaluated based on accuracy rate, sensitivity, specificity, misclassification rate and average square error under different data partition schemes(60:40, 70:30 and 80:20). This study reveals that decision tree model optimized for average square error (ASE) with 80:20 data partition scheme had minimum average square error (ASE) (0.146) and maximum sensitivity (79.67%) to predict the lame cow as lame.
机译:决策树算法用于根据Karan Fries杂交母牛单腿的体重分布百分比来开发la行预测模型。为了建立预测模型,记录了589头Karan Fries奶牛的健康状况数据(作为lam叶或健康状况)作为目标变量以及其他非遗传变量,例如分配给各个腿部的体重百分比(使用称重传感器平台),奇偶校验(1到10),怀孕状态(<; 90天,91-180天,> 181天和未怀孕),哺乳状态(<; 60天,61-120天,> 121天和干燥)和每日产奶量作为输入多变的。基于健康状况的分类以及平均平方误差(ASE)对预测模型进行了优化,以预测母牛的la行。在不同数据分区方案(60:40、70:30和80:20)下,根据准确率,敏感性,特异性,误分类率和平均平方误差对两个模型的性能进行了评估。这项研究表明,采用80:20数据分区方案针对均方误差(ASE)优化的决策树模型具有最小均方误差(ASE)(0.146)和最大灵敏度(79.67%),可以预测the脚母牛为la脚。

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