International Journal of Advanced Multidisciplinary Research and Studies
Volume 4, Issue 1, 2024
AI-Driven Risk Scoring Model for Global Cross-Border Trade Payment Transactions
Author(s): Michael Olumuyiwa Adesuyi, Olawole Akomolafe, Babajide Oluwaseun Olaogun, Victor Ukara Ndukwe, Joy Kweku Sakyi
Abstract:
Global cross-border trade payments involve complex transactional networks, multiple counterparties, and diverse regulatory environments, exposing financial institutions to operational, credit, and compliance risks. Traditional risk management approaches often rely on static rules or post-event reconciliation, limiting the ability to proactively detect potential anomalies and optimize liquidity. This presents an AI-Driven Risk Scoring Model designed to enhance risk management for global cross-border trade payment transactions by integrating predictive analytics, machine learning algorithms, and multi-dimensional data inputs. The proposed model leverages historical payment data, counterparty profiles, transaction metadata, and regulatory compliance information to generate dynamic risk scores for individual transactions in real time. Machine learning techniques, including supervised and unsupervised models, identify patterns indicative of delayed settlements, anomalous behavior, or potential non-compliance. The risk scores enable institutions to prioritize monitoring, allocate liquidity efficiently, and take proactive mitigation measures before high-risk events materialize. A core feature of the model is its integration with operational and compliance workflows. Risk assessment is embedded directly into transaction processing systems, enabling automated alerts, conditional settlement logic, and exception handling. The model also supports regulatory oversight by providing transparent, audit-ready risk metrics that align with AML/KYC standards, sanctions screening, and reporting obligations. This demonstrates that AI-driven risk scoring can significantly improve the predictive accuracy of transaction risk identification, reduce operational delays, and enhance decision-making for cross-border payment settlements. Furthermore, the model’s scalability allows financial institutions to extend their application across multiple jurisdictions, currencies, and trade networks, addressing the challenges of a globally interconnected payment ecosystem. The AI-Driven Risk Scoring Model represents a transformative approach to managing risk in global cross-border trade payments. By combining predictive analytics, machine learning, and real-time integration with operational and compliance systems, the model provides financial institutions with actionable insights, enhanced oversight, and optimized liquidity management, supporting resilient and future-ready trade finance operations.
Keywords: AI-Driven Risk Scoring, Cross-Border Trade, Payment Transactions, Predictive Analytics, Machine Learning, Fraud Detection, Transaction Monitoring, Credit Risk Assessment, Financial Risk Management, Real-Time Analysis, Anomaly Detection, Automated Decision-Making
Pages: 1569-1581
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