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首页> 外文期刊>Livestock Science >Classification of Spanish autochthonous bovine breeds. Morphometric study using classical and heuristic techniques.
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Classification of Spanish autochthonous bovine breeds. Morphometric study using classical and heuristic techniques.

机译:西班牙本地牛品种的分类。使用经典和启发式技术的形态计量学研究。

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摘要

Six morphometric traits (height at withers, height at rump, chest depth, width at hips, width at pins and rump length) were analysed to characterise from a breed point of view 518 females from four autochthonous Andalusian cattle breeds (Berrenda en Colorado, Berrenda en Negro, Cardena Andaluza and Negra Andaluza). Four methods (one classical and three heuristic) were used to distinguish between the four breeds by morphometric traits: Discriminant Function Analysis (DFA), Multilayer Perceptrons (MLPs) (a type of neural network), Probabilistic Neural Networks (PNNs) and Support Vector Machines (SVMs). Results indicated not only that DFA was overall inferior to the other three methods, but also that it could not be used to distinguish one breed from another when they were genetically very close or related in terms of breeding. MLP and SVM had similar ability to discriminate, both being better than PNN. Sensitivity analysis carried out on the models found to have the best discrimination power indicated that the most important variables were: depth, height at rump and width at pins.
机译:从品种的角度分析了六个形态特征(肩高,臀高,胸深,臀宽,胸针宽和臀长),以表征四种安达卢西亚本地牛品种(贝伦达恩科罗拉多,贝伦达)的518头雌性内格罗,卡德纳(Andena)和内格拉(Andrauza)。四种方法(经典方法和三种启发式方法)用于通过形态计量特征区分这四个品种:判别函数分析(DFA),多层感知器(MLP)(一种神经网络),概率神经网络(PNN)和支持向量机器(SVM)。结果表明,DFA总体上不及其他三种方法,而且当它们在遗传上非常接近或具有育种关系时,不能用于将一个品种与另一个品种区分开。 MLP和SVM具有相似的识别能力,均优于PNN。对具有最佳判别能力的模型进行的敏感性分析表明,最重要的变量是:深度,臀部的高度和针脚的宽度。

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