Short Sequence Representation Learning with Limited Supervision (2023–2026)

Abstract:
Predicting events based on short text and video data is widely found in real-world applications such as online crime detection, cyber-attack identification, and public security protection. However, to develop such an effective prediction model is very difficult due to the problems such as limited supervision, heterogeneous multiple sources, and missing and low-quality data. This project is to tackle these challenges. Expected outcome of this project will lay a theoretical foundation for effective short sequence representation learning and build next-generation intelligent systems. This should benefit our society and economy through the applications of multimodalityintegrated video technologies for cybersecurity and public safety.
Grant type:
ARC Discovery Projects
Researchers:
  • Professor
    School of Electrical Engineering and Computer Science
    Faculty of Engineering, Architecture and Information Technology
  • Associate Professor
    School of Electrical Engineering and Computer Science
    Faculty of Engineering, Architecture and Information Technology
Funded by:
Australian Research Council