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A Survey on Privacy Problem in Graph Learning
PhD Qualifying Examination Title: "A Survey on Privacy Problem in Graph Learning" by Mr. Qi HU Abstract: The proliferation of graph-structured data and the development of graph learning techniques, such as graph neural networks, have revolutionized various applications. On the one hand, these advancements have enabled the extraction of valuable insights from complex graph data, leading to unprecedented opportunities for knowledge discovery and decision-making. On the other hand, the increasing availability of graph data and the growing capabilities of graph learning models have also introduced significant privacy concerns. Despite ongoing research efforts to address these privacy risks, the problem remains largely unresolved. In this survey, we provide a comprehensive review of privacy in graph learning, categorizing privacy attacks according to the adversary's motivations to highlight the vulnerabilities present in graph data and models. We then present a detailed overview of prominent defense strategies that have been developed to mitigate these privacy risks, including data anonymization, differential privacy, and private graph learning. Beyond existing works, we identify emerging privacy concerns as graph learning continues to evolve. Lastly, we outline several promising directions for future research to ensure the responsible and privacy-preserving use of graph- structured data. Date: Thursday, 16 May 2024 Time: 10:00am - 12:00noon Venue: Room 3494 Lifts 25/26 Committee Members: Dr. Yangqiu Song (Supervisor) Dr. Wei Wang (Chairperson) Dr. Dongdong She Dr. Binhang Yuan