DETECTING FINANCIAL FRAUD IN UZBEKISTAN’S DIGITAL ECOSYSTEM: A COMPARATIVE ANALYSIS OF MACHINE LEARNING AND DATA BALANCING TECHNIQUES

Received: 2026-07-15 15:50:49

Published: 2026-04-18

Abstract

The report discusses the growing risk of financial fraud within Uzbekistan’s digital banking ecosystem, focusing on unauthorized loans obtained through stolen personal information. Conventional rule-based detection frameworks fail to deliver reliable results, generating excessive false alarms and struggling to adapt to evolving scam tactics. By deploying machine learning models such as Random Forest, XGBoost, neural networks, and anomaly detection algorithms that paired with data balancing techniques like SMOTE, the research achieves significant improvements in fraud identification accuracy.

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How to Cite

[1]
Zairova R.Sh. tran. 2026. DETECTING FINANCIAL FRAUD IN UZBEKISTAN’S DIGITAL ECOSYSTEM: A COMPARATIVE ANALYSIS OF MACHINE LEARNING AND DATA BALANCING TECHNIQUES. Uzbekistan Open Conference. 1 (Apr. 2026), 300–305. DOI:https://doi.org/10.57033/.

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