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Application of bayesian network modelling to predict food fraud products from China

机译:贝叶斯网络建模在中国预测食品欺诈产品的应用

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摘要

Previous studies identified that the origin of food fraud imported into EU was most commonly China. However, which food and drink categories were most affected by fraud? This study aimed to use bayesian network to predict food fraud products originating from China. RASFF notifications related to China were reviewed from 2004 to 2018.1668 fraud-related notifications were included in the development of the BN model. GeNie was used to construct the Bayesian network structure diagram and fraud risk category was directly linked to 6 of the explanatory variables: food and drink categories, year, hazard/others, notification by, origin or distributed via and action taken. The types of food fraud were divided into artificial enhancement (AE), adulteration, documentation, illegal trade, other and unauthorised activities. The BN model predicted the distribution of probabilities for food fraud type as AE (43.77%), other forms of fraud (20.20%), adulteration (15.95%), documentation (10.49), illegal trade (6.47%) and unauthorised activities (3.18%). Cereals and bakery products (21.34%) were most commonly affected by other forms of fraud (e.g. use of unauthorised genetically modified organism Bt63 in rice products) and adulteration with melamine and aluminium. Fruits and vegetables (12.65%) were affected by artificial enhancement (i.e. use of unauthorised pesticides or pesticide levels were above the maximum residue level). The model predicted 85% of the fraud correctly. The model is beneficial to border controls and inspections to select targeted food products for sampling and can be used to predict types of food fraud and the relationships between the variables.
机译:以前的研究发现,进口到欧盟进口的食物欺诈的起源是中国最常见的。但是,哪些食物和饮料类别受到欺诈的影响最大?本研究旨在使用贝叶斯网络预测源自中国的食物欺诈产品。与中国有关的RASFF通知从2004年到2018年到2018.1668.168888年欺诈有关的通知被列入了BN模型的制定。 Genie用于构建贝叶斯网络结构图和欺诈风险类别直接与解释性变量的6个直接相关:食品和饮料类别,年,危险/其他,通知,起源或分布通过和行动。食品欺诈的类型分为人工增强(AE),掺假,文件,非法贸易,其他和未经授权的活动。 BN模型预测食物欺诈型概率分布为AE(43.77%),其他形式的欺诈(20.20%),掺假(15.95%),文件(10.49),非法贸易(6.47%)和未经授权的活动(3.18 %)。谷物和面包店产品(21.34%)最常受其他形式的欺诈影响(例如,在水稻产品中使用未经授权的遗传修饰的生物BT63)和三聚氰胺和铝的掺假。水果和蔬菜(12.65%)受人工增强的影响(即未经授权的农药或农药水平的使用高于最大残留水平)。该模型正确预测了85%的欺诈。该模型有利于边界控制和检查,选择针对采样的目标食品,可用于预测食物欺诈的类型和变量之间的关系。

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