Gavai Anand, Bouzembrak Yamine, Mu Wenjuan, Martin Frank, Kaliyaperumal Rajaram, van Soest Johan, Choudhury Ananya, Heringa Jaap, Dekker Andre, Marvin Hans J P
Industrial Engineering & Business Information Systems, University of Twente, Enschede, The Netherlands.
Wageningen Food Safety Research, Akkermaalsbos 2, 6708 WB, Wageningen, The Netherlands.
NPJ Sci Food. 2023 Sep 1;7(1):46. doi: 10.1038/s41538-023-00220-3.
Ensuring safe and healthy food is a big challenge due to the complexity of food supply chains and their vulnerability to many internal and external factors, including food fraud. Recent research has shown that Artificial Intelligence (AI) based algorithms, in particularly data driven Bayesian Network (BN) models, are very suitable as a tool to predict future food fraud and hence allowing food producers to take proper actions to avoid that such problems occur. Such models become even more powerful when data can be used from all actors in the supply chain, but data sharing is hampered by different interests, data security and data privacy. Federated learning (FL) may circumvent these issues as demonstrated in various areas of the life sciences. In this research, we demonstrate the potential of the FL technology for food fraud using a data driven BN, integrating data from different data owners without the data leaving the database of the data owners. To this end, a framework was constructed consisting of three geographically different data stations hosting different datasets on food fraud. Using this framework, a BN algorithm was implemented that was trained on the data of different data stations while the data remained at its physical location abiding by privacy principles. We demonstrated the applicability of the federated BN in food fraud and anticipate that such framework may support stakeholders in the food supply chain for better decision-making regarding food fraud control while still preserving the privacy and confidentiality nature of these data.
由于食品供应链的复杂性及其易受包括食品欺诈在内的许多内部和外部因素影响,确保食品安全健康是一项巨大挑战。最近的研究表明,基于人工智能(AI)的算法,特别是数据驱动的贝叶斯网络(BN)模型,非常适合作为预测未来食品欺诈的工具,从而使食品生产商能够采取适当行动避免此类问题发生。当可以使用供应链中所有参与者的数据时,此类模型会变得更加强大,但数据共享受到不同利益、数据安全和数据隐私的阻碍。如生命科学的各个领域所示,联邦学习(FL)可能会规避这些问题。在本研究中,我们使用数据驱动的BN展示了FL技术在食品欺诈方面的潜力,整合来自不同数据所有者的数据,而数据不会离开数据所有者的数据库。为此,构建了一个框架,该框架由三个地理位置不同的数据站组成,这些数据站托管着不同的食品欺诈数据集。使用这个框架,实施了一种BN算法,该算法在不同数据站的数据上进行训练,同时数据遵守隐私原则,仍保留在其物理位置。我们展示了联邦BN在食品欺诈中的适用性,并预计这样的框架可能会支持食品供应链中的利益相关者在食品欺诈控制方面做出更好的决策,同时仍能保持这些数据的隐私性和保密性。