Machine Learning on Graphs

  • Type: Seminar (S)
  • Chair: KIT-Fakultäten - KIT-Fakultät für Wirtschaftswissenschaften - Institut für Wirtschaftsinformatik und Marketing
    KIT-Fakultäten - KIT-Fakultät für Wirtschaftswissenschaften
  • Semester: WS 23/24
  • Lecturer: Chen Shao
    Dr.-Ing. Michael Färber
  • SWS: 2
  • Lv-No.: 2500046
  • Information: On-Site
Content

Graph representation learning deals with capturing and understanding the complex relationships and patterns inherent in graph-structured data. It focuses on developing techniques and algorithms to extract meaningful representations from graphs, enabling tasks such as node classification, link prediction, community detection, and graph generation.
This seminar will cover the fundamental concepts of graph representation learning, such as knowledge graphs, graph theory, and graph spectral theory. Additionally, you will have the chance to engage in collaborative reading of recent technical reports and research papers with your peers, encompassing machine learning algorithms pertaining to large language models, knowledge embedding, and social attribute prediction.

Language of instructionEnglish