Investigation of financial fraud detection by using big data analytics
Abstract
The aim of this study is to examine the application of big data analytics in financial fraud detection, considering
advancements in modern technology and the increasing complexity of financial crime schemes. The research
is based on an extensive review of the scientific literature, data synthesis, and the application of empirical methods,
including clustering analysis using the UMAP algorithm, graphical visualization techniques, and descriptive statistics,
to systematically assess fraud detection mechanisms and their effectiveness. The findings reveal that advanced artificial
intelligence techniques, such as deep neural networks and random forest models, enable the efficient detection of
financial fraud in real time. Big data analytics not only facilitates the processing of vast financial transaction datasets
but also allows for the integration of diverse data sources and the development of adaptive predictive models capable
of adjusting to evolving fraud patterns. However, the study also highlights critical challenges, including data quality
assurance, privacy protection, and the need for significant computational resources. The practical significance of this
research lies in the development of more effective financial fraud prevention strategies, enhancing the resilience and
trustworthiness of the financial sector. These insights are particularly valuable for banks, insurance companies, and
other financial institutions seeking to mitigate fraud risks and safeguard clients from potential losses. The originality of
the study is reflected in its systematic evaluation of the application of big data analytics in financial fraud prevention,
grounded in the integration of theoretical and practical knowledge.
Issue date (year)
2025Author
Učkuronytė, OlivijaThe following license files are associated with this item: