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Facilitating Visual Analytics with ChatGPT: 2023 VAST Challenge Award - Application of LLMs to Support VA Process
2
Zitationen
9
Autoren
2023
Jahr
Abstract
To solve the VAST Challenge 2023 MC3, our team employed a large language model, ChatGPT, to explore the potential of AI -guided visual analytics for the detection of anomalies within a knowledge graph in the context of illegal fishing and marine trade. We employed a systematic and iterative approach, guided by GPT augmentation, that enabled problem understanding, data processing, solution exploration, code writing, and results analysis. By generating and analyzing various graphs, we identified anomalies related to revenue and product services. Further analyses unveiled potential illegal fishing activities and identified instances warranting additional investigation. Overall, our work highlights both the strengths and limitations of ChatGPT in aiding the visual analytics process and emphasizes the importance of human judgment in refining AI-generated outputs.
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