METHODOLOGICAL FOUNDATIONS FOR FORMING CUSTOMS RISK PROFILE INDICATORS BASED ON MATHEMATICAL AND STATISTICAL METHODS

METHODOLOGICAL FOUNDATIONS FOR FORMING CUSTOMS RISK PROFILE INDICATORS BASED ON MATHEMATICAL AND STATISTICAL METHODS

Authors

  • Niyazov Sherzod Shovkat ugli

DOI:

https://doi.org/10.5281/zenodo.20390828

Keywords:

risk management, customs control, risk profile, conditional probability, Laplace smoothing, lift coefficient, naive Bayes classifier, association rules

Abstract

The paper investigates a mathematical and statistical methodology for designing risk profile
indicators (RPIs) — the central element of customs risk management. Using two datasets — 16,035
consignments with detected discrepancies and 616,925 declarations — seven base indicators are combined
into 120 combinations and 386,516 risk indicator sets. Conditional probabilities are computed with Bayes–
Laplace smoothing, and the lift coefficient ranks combinations by their fraud-detection power.

Author Biography

Niyazov Sherzod Shovkat ugli

Deputy Head of the Targeting and Risk Monitoring Department
Customs Committee under the Ministry of Economy and Finance
of the Republic of Uzbekistan
Major of the Customs Service Customs Institute
Tashkent, Uzbekistan


References

World Customs Organization. Customs Risk Management Compendium. – Brussels: WCO, 2012. – Vol. 1–2. URL:

https://www.wcoomd.org/en/Topics/Facilitation/Instrument%20and%20Tools/Tools/Risk%20Management%20

Compendium

World Customs Organization. SAFE Framework of Standards to Secure and Facilitate Global Trade. 2021 Edition. –

Brussels: WCO, 2021.

ISO 31000:2018. Risk management — Guidelines. – Geneva: International Organization for Standardization, 2018.

– 16 p.

Knight F. H. Risk, Uncertainty and Profit. – Boston: Houghton Mifflin Company, 1921. – 381 p.

Jeffreys H. Theory of Probability. – 3rd ed. – Oxford: Oxford University Press, 1961. – 459 p.

Agrawal R., Srikant R. Fast Algorithms for Mining Association Rules // Proc. of the 20th VLDB Conference. – Santiago

de Chile, 1994. – P. 487–499.

Manning C. D., Schütze H. Foundations of Statistical Natural Language Processing. – Cambridge, MA: MIT Press,

– 680 p.

Shapley L. S. A Value for n-Person Games // Contributions to the Theory of Games / Eds. H. W. Kuhn, A. W. Tucker. –

Princeton: Princeton University Press, 1953. – Vol. II. – P. 307–317.

Triepels R., Daniels H., Feelders A. Data-driven fraud detection in international shipping // Expert Systems with

Applications. – 2018. – Vol. 99. – P. 193–202. DOI: 10.1016/j.eswa.2018.01.007.

Geourjon A.-M., Laporte B. Risk management for targeting customs controls in developing countries: a risky venture

for revenue performance? // Public Administration and Development. – 2005. – Vol. 25, No. 2. – P. 105–113.

Vanhoeyveld J., Martens D., Peeters B. Customs fraud detection: assessing the value of behavioural and highcardinality

data under the imbalanced learning issue // Pattern Analysis and Applications. – 2020. – Vol. 23. – P.

–1477.

Chawla N. V., Bowyer K. W., Hall L. O., Kegelmeyer W. P. SMOTE: Synthetic Minority Over-sampling Technique //

Journal of Artificial Intelligence Research. – 2002. – Vol. 16. – P. 321–357.

Chen T., Guestrin C. XGBoost: A Scalable Tree Boosting System // Proc. of the 22nd ACM SIGKDD International

Conference on Knowledge Discovery and Data Mining (KDD’16). – San Francisco, CA, 2016. – P. 785–794.

Lundberg S. M., Lee S.-I. A Unified Approach to Interpreting Model Predictions // Advances in Neural Information

Processing Systems (NeurIPS 2017). – Long Beach, CA, 2017. – P. 4765–4774.

Customs code of the Republic of Uzbekistan. URL: https://lex.uz/ru/docs/5535133

Customs Committee under the Ministry of Economy and Finance of the Republic of Uzbekistan. Official documents on

the “Green Channel” mechanism and the electronic declaration system. – Tashkent: 2020–2024.

Published

2026-05-01

How to Cite

Niyazov, S. (2026). METHODOLOGICAL FOUNDATIONS FOR FORMING CUSTOMS RISK PROFILE INDICATORS BASED ON MATHEMATICAL AND STATISTICAL METHODS. Innovation Science and Technology, 2(5). https://doi.org/10.5281/zenodo.20390828
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