View Item 
        •   Utrecht University Student Theses Repository Home
        • UU Theses Repository
        • Theses
        • View Item
        •   Utrecht University Student Theses Repository Home
        • UU Theses Repository
        • Theses
        • View Item
        JavaScript is disabled for your browser. Some features of this site may not work without it.

        Browse

        All of UU Student Theses RepositoryBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

        VAST Challenge 2025 M3

        Thumbnail
        View/Open
        Yjara_Verhagen_Thesis.pdf (4.912Mb)
        Publication date
        2025
        Author
        Verhagen, Yjara
        Metadata
        Show full item record
        Summary
        This work presents a visual analytics system designed to address the VAST Challenge 2025 Mini- Challenge 3, aiming to assist investigator Clepper Jensen in uncovering rising illegal activity in Oceanus. The project leverages a knowledge graph derived from two weeks of radio communica- tions, manually annotated by Jensen and his intern. The interface, built with JavaScript (D3.js and graphology.js), enables intuitive exploration of communication networks between entities. Large Language Models (LLMs) were employed for message labeling, reducing manual investiga- tion of messages. A pixel-based circular graph provides a rapid overview of message flows, while LLM-assisted pseudonym detection combined with heatmaps helped identify key groups: entities responsible for area protection, a group engaged in illegal operations, and a music production collective. Analysis of topic conversation peaks and communication timing exposed the use of tourism as a facade for illegal activities and preparations for a music video shoot at Nemo Reef (location). The findings also provide evidence for Nadia Conti’s continued involvement in illicit practices. This approach demonstrates how interactive visualization and AI-driven analysis can streamline investigative workflows in complex datasets.
        URI
        https://studenttheses.uu.nl/handle/20.500.12932/49803
        Collections
        • Theses
        Utrecht university logo