Explainable Product Classification for Customs

Author:

Lee Eunji1,Kim Sihyeon1,Kim Sundong2,Jung Soyeon3,Kim Heeja4,Cha Meeyoung1

Affiliation:

1. School of Computing, KAIST, Republic of Korea

2. AI Graduate School, GIST, Republic of Korea

3. ICT and Data Policy Bureau, Korea Customs Service, Republic of Korea

4. Customs Valuation and Classification Institute, Korea Customs Service, Republic of Korea

Abstract

The task of assigning internationally accepted commodity codes (aka HS codes) to traded goods is a critical function of customs offices. Like court decisions made by judges, this task follows the doctrine of precedent and can be nontrivial even for experienced officers. Together with the Korea Customs Service (KCS), we propose a first-ever explainable decision supporting model that suggests the most likely subheadings (i.e., the first six digits) of the HS code. The model also provides reasoning for its suggestion in the form of a document that is interpretable by customs officers. We evaluated the model using 5,000 cases that recently received a classification request. The results showed that the top-3 suggestions made by our model had an accuracy of 93.9% when classifying 925 challenging subheadings. A user study with 32 customs experts further confirmed that our algorithmic suggestions accompanied by explainable reasonings, can substantially reduce the time and effort taken by customs officers for classification reviews.

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

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