Knowledge Graph Architectures for Integrated Financial Intelligence: Bridging Asset Management and Regulatory Compliance Systems
DOI:
https://doi.org/10.22399/ijcesen.3859Keywords:
Knowledge graphs, Financial intelligence, Regulatory compliance, Asset management, Semantic modelingAbstract
The financial industry faces unprecedented challenges in managing heterogeneous and interconnected data essential for risk assessment, regulatory compliance, and portfolio management. Knowledge graphs represent an emerging architectural paradigm that enables semantic representation of complex relationships among diverse financial entities including securities, issuers, counterparties, and regulatory frameworks. These graph architectures facilitate real-time integration of market events, Environmental, Social, and Governance (ESG) considerations, regulatory changes, and various risk factors while maintaining explainability of relationships between diverse data entities. Leading asset managers and federal financial regulatory agencies now leverage knowledge graph systems to enhance portfolio risk visibility, proactively identify regulatory compliance issues, and discover investment opportunities. The semantic modeling capabilities enable financial organizations to dynamically map regulatory requirements to specific positions while providing holistic views of cross-asset exposures. This transformation represents a paradigm shift in financial intelligence infrastructure, moving from disparate data silos toward integrated, AI-powered knowledge systems that enhance operational efficiency and strategic decision-making in increasingly complex financial markets.
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