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arxiv 2111.01663 v1 pith:ISKY6PWP submitted 2021-11-02 cs.AI cs.IR

Classification of Goods Using Text Descriptions With Sentences Retrieval

classification cs.AI cs.IR
keywords codecustomsclassificationmodeltaskdecisiongoodsmade
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The task of assigning and validating internationally accepted commodity code (HS code) to traded goods is one of the critical functions at the customs office. This decision is crucial to importers and exporters, as it determines the tariff rate. However, similar to court decisions made by judges, the task can be non-trivial even for experienced customs officers. The current paper proposes a deep learning model to assist this seemingly challenging HS code classification. Together with Korea Customs Service, we built a decision model based on KoELECTRA that suggests the most likely heading and subheadings (i.e., the first four and six digits) of the HS code. Evaluation on 129,084 past cases shows that the top-3 suggestions made by our model have an accuracy of 95.5% in classifying 265 subheadings. This promising result implies algorithms may reduce the time and effort taken by customs officers substantially by assisting the HS code classification task.

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