The use of machine learning to identify the correctness of HS Code for the customs import declarations

Hao Chen, Ben van Rijnsoever, Marcel Molenhuis, Dennis van Dijk, Yao-Hua Tan, B. Rukanova
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引用次数: 3

Abstract

As an increasing volume of international trade activities around the world, the amount of cross-boarder import declarations grows rapidly, resulting in an unprecedented scale of potentially fraudulent transactions, in particular false commodity code (e.g., HS Code). The incorrect HS Code will cause duty risk and adversely impact the revenue collection. Physical investigation by the customs administrations is impractical due to the substantial quantity of declarations. This paper provides an automatic approach by harnessing the power of machine learning techniques to relief the burden of customs targeting officers. We introduced a novel model based on the off-the-shelf embedding encoder to identify the correctness of HS Code without any human effort. Determining whether the HS Code is correctly matched with commodity description is a classification task, so the labelled data is typically required. However, the lack of gold standard labelled data sets in customs domain limits the development of supervised-based approach. Our model is developed by the unsupervised mechanism and trained on the unlabelled historical declaration records, which is robust and able to be smoothly adapted by the different customs administrations. Rather than typically classifying whether the HS Code is correct or not, our model predicts the score to indicate the degree of the HS Code being correct. We have evaluated our proposed model on the ground-truth data set provided by Dutch customs officers. Results show promising performance of 71% overall accuracy.
利用机器学习识别海关进口报关单HS编码的正确性
随着世界范围内国际贸易活动的增加,跨境进口申报数量迅速增长,导致潜在欺诈交易的规模空前,特别是虚假商品代码(如HS code)。不正确的HS编码将造成关税风险,并对税收产生不利影响。由于申报数量庞大,海关当局进行实地调查是不切实际的。本文通过利用机器学习技术的力量提供了一种自动方法,以减轻海关目标官员的负担。本文介绍了一种基于嵌入式编码器的新型模型,该模型可以在不需要人工操作的情况下识别HS码的正确性。确定HS编码是否与商品描述正确匹配是一项分类任务,因此通常需要标签数据。然而,海关领域缺乏黄金标准标记数据集限制了基于监督的方法的发展。我们的模型是由无监督机制开发的,并在未标记的历史申报记录上进行了训练,这是一个强大的模型,能够被不同的海关管理部门顺利地适应。我们的模型不是典型地对HS编码是否正确进行分类,而是预测分数来表明HS编码正确的程度。我们根据荷兰海关官员提供的真实数据集评估了我们提出的模型。结果显示,总体准确率为71%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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