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KG-STAR 2025 : 2nd International Workshop on Knowledge Graphs for Responsible AI | |||||||||||||||
Link: https://sites.google.com/view/kg-star/home | |||||||||||||||
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Call For Papers | |||||||||||||||
KG-STAR 2025: 2nd International Workshop on Knowledge Graphs for Responsible AI
co-located with the 22nd Extended Semantic Web Conference (ESWC) June 1 - 5, 2025 | Portoroz | Slovenia. 🌍 Join us at ESWC 2025 as we explore the intersection of Knowledge Graphs (KGs) and Responsible AI. We invite high-quality submissions that address key challenges and opportunities in this space. 🔍 Topics of Interest (not limited to): - Knowledge Graphs for Bias Mitigation - Techniques and methodologies for using Knowledge Graphs to identify and mitigate biases in AI models. - Case studies demonstrating the successful application of Knowledge Graphs in addressing bias challenges. - Interpretability and Explainability - Approaches to enhancing the interpretability and explainability of black-box AI models through integrating Knowledge Graphs. - Evaluating the effectiveness of Knowledge Graphs in making AI decision-making processes more transparent. - Privacy-Preserving Knowledge Graphs - Methods for constructing Knowledge Graphs that prioritize privacy and comply with data protection regulations. - Applications of Knowledge Graphs in privacy-preserving AI systems. - Fairness in AI with Knowledge Graphs - How Knowledge Graphs contribute to ensuring fairness in AI applications. - Techniques for using Knowledge Graphs and their embeddings to identify and rectify unfair biases in AI models. - Ethical Considerations in Knowledge Graph Construction - Ethical challenges in the creation and maintenance of Knowledge Graphs. - Best practices for ensuring responsible and ethical Knowledge Graph development. - Real-world applications of Knowledge Graphs in Responsible AI. - Integration of Large Language Models (LLMs) and Knowledge Graphs (KGs) - Enhancing LLMs’ accuracy, and consistency, reducing hallucinations and harmful content generation, fake news detection, fact-checking, etc., with knowledge-grounded techniques, e.g., Graph RAG (graph-based retrieval augmented generation) and KG RAG. - Enhancing the interoperability of KG downstream tasks through LLMs’ natural language interfaces, transferability, and generalization capacity, e.g., GNN (graph neural network)-LLM alignment. 👥 Organizing Committee: 👩💻 Edlira Kalemi Vakaj, Birmingham City University, UK 🧑💻 Nandana Mihindukulasooriya, IBM Research, USA 🧑💻 Manas Gaur, University of Maryland Baltimore County, USA 🧑💻 Arijit Khan, Aalborg University, Denmark |
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