
Zekai Wang
Graduate student @ Wuhan University
multi-task learning
text classification
distributional robustness
adversarial multi-armed bandit
task weighting
learning-to-learn paradigm
certified robustness
randomized smoothing
3
presentations
7
number of views
SHORT BIO
Zekai Wang is an M.S. student in the School of Computer Science at Wuhan University. Before that, he received B.S. degree in computer science from Wuhan University in 2021. He was a visiting student at the University of California, Berkeley from January 2020 to June 2020. His research primarily revolves around machine learning, specifically emphasizing trustworthy machine learning and multi-task learning.
Presentations

MetaWeighting: Learning to Weight Tasks in Multi-Task Learning
Yuren Mao and 4 other authors

BanditMTL: Bandit-based Multi-task Learning for Text Classification
Yuren Mao and 4 other authors

DRF: Improving Certified Robustness via Distributional Robustness Framework
Zekai Wang and 2 other authors