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Classification of Wild and Farmed Salmon Using Bayesian Belief Networks and Gas Chromatography-Derived Fatty AcidDistributions

机译:利用贝叶斯信念网络和气相色谱衍生的脂肪酸分布对野生鲑鱼和养殖鲑鱼进行分类

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In this study, we present the use of Bayesian Belief Networks (BBN) for the classification of wild versus farmed Atlantic salmon (Salmo salar L). Using a data set of 131 salmon samples from several geographical origins and the gas chromatography-derived distributions of 12 fatty acids (FAs), a Bayesian Belief Network was constructed, ultimately using only the three most important FAs (16:1n-7, 18:2n-6, and 22:5n-3). The training data set yielded a prediction error of 0% (68/68 farmed; 20/20 wild correct) while the validation data set prediction error was 4.65% (32/32 farmed; 9/11 wild correct). Different randomly chosen validation sets yielded similar prediction accuracies. This model was then applied to 30 market (store-bought) samples where predictions were compared with the product labels.
机译:在这项研究中,我们目前使用贝叶斯信念网络(BBN)对野生鲑鱼和养殖大西洋鲑(Salmo salar L)进行分类。利用来自多个地理起源的131个鲑鱼样品的数据集以及气相色谱法得出的12种脂肪酸(FA)的分布,构建了贝叶斯信念网络,最终仅使用了三个最重要的FA(16:1n-7,18 :2n-6和22:5n-3)。训练数据集产生的预测误差为0%(68/68,正确率为20/20),而验证数据集的预测误差为4.65%(32/32,正确率为9/11)。不同的随机选择的验证集产生相似的预测精度。然后将该模型应用于30个市场(商店购买)样本,在样本中将预测与产品标签进行比较。

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