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Comparison of artificial neural networks and multiple linear regression for prediction of dairy cow locomotion score

机译:人工神经网络比较乳制母牛机壳评分预测的多元线性回归

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摘要

In this study, artificial neural networks (ANNs) were employed to investigate the relationship between locomotion score and production traits. A total number of 123 dairy cows from a free-stall housing farm were used in this study. To compare the effectiveness of the ANNs for the prediction of locomotion score, the multiple linear regression (MLR) model was developed using the eight production traits, body condition score, parity, days in milk, daily milk yield, milk fat percent, milk protein percent, daily milk fat yield, and daily milk protein yield as input variables to predict the locomotion score. The ANN predictions gave a higher coefficient of determination (R2) values with lower mean squared error (MSE) than MLR. The R2 and MSE of the MLR model were 0.53 and 0.36, respectively. However, the ANN model for the same dataset produced much improved results with R2 = 0.80 ‏ and MSE = 0.16, respectively. Globally, the results of this study showed that the connectionist network model was a better tool to predict locomotion scores compared to the multiple linear regression.
机译:在这项研究中,人工神经网络(ANNS)被采用了研究机器分数与生产性状之间的关系。本研究中使用了来自自由摊位的房地产农场的123奶牛总数。为了比较ANN的有效性来预测运动量评分,使用八个生产性状,身体状况得分,平价,牛奶,日奶产率,乳脂百分比,牛奶蛋白,乳蛋白的多个线性回归(MLR)模型进行了多元线性回归(MLR)模型百分比,每日乳脂肪产率和每日牛奶蛋白质产量作为输入变量,以预测运动量分数。 ANN预测对具有低于MLR的较低平均平方误差(MSE)的较高的确定系数(R2)值。 MLR模型的R2和MSE分别为0.53和0.36。然而,相同数据集的ANN模型分别产生了大量改善的结果,分别具有R2 = 0.80和MSE = 0.16。在全球范围内,该研究的结果表明,与多个线性回归相比,连接人网络模型是预测运动学分数的更好工具。

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