Skip to main content
King Abdullah University of Science and Technology
Communication Theory Lab
CTL
Communication Theory Lab
  • Home
  • News
  • Events
  • People
    • All People
    • Principal Investigator
    • Research Scientists
    • Postdoctoral Fellows
    • Students
    • Visiting Scholars
    • Former Members
    • Former Members from Texas A&M University
    • Former Members from University of Minnesota
    • Collaborators
    • Alumni
  • Research
  • Publications
  • Teaching
  • Funding
  • Media
  • Contact Us

traffic forecasting

KAUST-CEMSE-CS-PhD-Dissertation-Defense-Xiaochuan-Gou-Explainability-and-Efficiency-in-Spatio-Temporal-Models

Explainability and Efficiency in Spatio-Temporal Models: Applications to Traffic Forecasting

Xiaochuan Gou, Ph.D. Student, Computer Science
Jul 6, 15:00 - 18:00

B5 L5 R5209

traffic forecasting Graph Neural Networks model interpretability

This dissertation addresses key challenges in deep learning-based traffic forecasting, including computational efficiency, model interpretability, and data limitations, despite recent progress in spatio-temporal modeling techniques.

Communication Theory Lab (CTL)

Footer

  • A-Z Directory
    • All Content
    • Browse Related Sites
  • Site Management
    • Log in

© 2025 King Abdullah University of Science and Technology. All rights reserved. Privacy Notice