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Large Language Models

Related keywords:


  • compliance automation
  • crypto-asset markets
  • Explainable AI
  • federated learning
  • fraud detection
  • gender-based violence
  • Hybrid AI
  • Knowledge Injection
  • markets in Crypto- Assets Regulation (MiCAR)
  • Medical Visual Question Answering
  • Multi-Agent Systems
  • Multimodal Learning
  • Natural Language Processing
  • off-chain due diligence
  • Personal- ized Recommender Systems
  • regulatory technology (RegTech)
  • Social bias in media representation
  • Web text mining

Publicaties voor trefwoord "Large Language Models"
2026
Mario Trerotola, Mimmo Parente en Davide Calvaresi, A Hybrid Multi-Agent System for Early Scam Detection in Crypto-Assets (2026), in: Applied Sciences - MDPI
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2025
Zhan Liu en Nicole Glassey Balet, A Hybrid AI System for Evaluating Media Representation of Violence and Inequality, in: 26th International Conference on Web Information Systems Engineering, Marrakech, Morocco, Springer Nature, 2025
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Ege Soyarar, Reyhan Aydoğan, Berk Buzcu en Davide Calvaresi, Explaining Federated Learning-based Movie Recommendations, in: IEEE MetroXRAINE 2025, Ancona, IEEE, 2025
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Henning Müller, Ao Ma, Zhiyuan Li, Zhuonan Liang, Tiancheng Gu, Jianan Fan, Jieting Long en Weidong Cai, LLM-Enhanced Information Mining for Medical Visual Question Answering, Workshop on Large Language Model Using Multi-modal Data for User Modeling, Sydney, Australia, 2025. (2025), in: WWW '25: The ACM Web Conference 2025(2297-2305)
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