Skip to main content
Extreme Statistics
XSTAT
Bayesian Deep Learning
Main navigation
Home
People
All Profiles
Principal Investigators
Postdoctoral Fellows
Events
All Events
Events Calendar
News
Projects
Topics
Courses
Theses
Publications
traffic forecasting
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.