利用极增强神经网络(xbnet)进行海关欺诈检测

Diyouva Christa Novith, Adrianta Ras Sembiring, Muhammad Hadiyan Ridho
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引用次数: 0

摘要

由于注意到跨境贸易的重要作用,海关不仅在维护供应链方面发挥着关键作用,而且在确保政府收入免遭故意欺诈方面也发挥着重要作用。鉴于国际贸易量巨大而劳动力有限,世界各地的海关必须实施高效和有效的风险管理。本文提出的 XBNet 是一种基于树的算法与深度学习算法的集合,用于检测进口活动中的欺诈行为。XBNet 的优势在于将梯度提升树与神经网络相结合,每一层的权重、偏差和损失都会根据每棵树的重要特征进行同步调整。本研究的对象是来自四个海关办事处的进口申报数据,并为每个海关办事处设置了模型,以捕捉与其所在区域相关的欺诈模式。 我们比较了两种不同参数的模型,得出结论:学习率 = 1%、隐层数 = 2、激活函数 = sigmoid、epochs = 100 的模型最适用于 Belawan、Merak 和 Makassar;隐层数 = 2、epochs = 50 和其他参数设置相同的模型最适用于 Tanjung Emas。
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CUSTOMS FRAUD DETECTION USING EXTREMELY BOOSTED NEURAL NETWORK (XBNET)
Noticing the vital role of cross-border trade has made Customs plays a crucial role not only in maintaining supply chain but also in securing government revenue from intentional fraud. Given the huge volume of international trade and limited workforce, Customs across the world must implement efficient and effective risk management. This paper proposes XBNet, an ensemble of tree-based algorithms with deep learning algorithms, to detect fraud in import activity. The strength of XBNet is combining gradient-boosted trees with neural networks where the weights, bias, and loss are adjusted simultaneously with the importance features of each tree in each layer. The object of this study is Import Declaration data from four Customs Offices, and the model is set for each Customs office to capture fraud patterns related to their region.  We compared the model with two different parameters and concluded the models with learning rates = 1%, number of hidden layers = 2, activation function = sigmoid, and number of epochs = 100 as the most suitable for the Belawan, Merak, and Makassar and model with number of hidden layers = 2, number of epochs = 50 and other parameters are set the same as the most suitable for Tanjung Emas.
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