Yaoliang Yu

Faculty Member

Associate Professor, David R. Cheriton School of Computer Science, University of Waterloo

Canada CIFAR Artificial Intelligence Chair

Yaoliang Yu is currently an associate professor in the David R. Cheriton School of Computer Science at University of Waterloo. He obtained his PhD from the computing science department of University of Alberta in 2013, and he spent two wonderful postdoctoral years at CMU. His main research interests include robust regression and classification, representation learning, kernel methods, generative models, convex and nonconvex optimization, distributed system, and applications in computer vision, natural languages, and finance.

Research Interests

  • Robust Methods
  • Generative Models
  • Convex and Nonconvex Optimization
  • Distributed Optimization

Highlights

  • PhD Dissertation Award from the Canadian Artificial Intelligence Association, 2015
  • Top reviewers for ICML/NeurIPS, 2018
  • ACM SIGSOFT Distinguished Paper Award 2020

Publications

The Art of Abstention: Selective Prediction and Error Regularization for Natural Language Processing

Ji Xin and Raphael Tang and Yaoliang Yu and Jimmy Lin

2021

Optimality and stability in non-convex smooth games

Guojun Zhang and Pascal Poupart and Yaoliang Yu

2022

Are my deep learning systems fair? An empirical study of fixed-seed training

Shangshu Qian and Viet Hung Pham and Thibaud Lutellier and Zeou Hu and Jungwon Kim and Lin Tan and Yaoliang Yu and Jiahao Chen and Sameena Shah

2021

S: Sign-Sparse-Shift Reparametrization for Effective Training of Low-bit Shift Networks

Xinlin Li and Bang Liu and Yaoliang Yu and Wulong Liu and Chunjing Xu and Vahid Partovi Nia

2021

Demystifying and Generalizing BinaryConnect

Tim Dockhorn and Yaoliang Yu and Eyyüb Sari and Mahdi Zolnouri and Vahid Partovi Nia

2021

Quantifying and Improving Transferability in Domain Generalization

Guojun Zhang and Han Zhao and Yaoliang Yu and Pascal Poupart

2021

Conditional Generative Quantile Networks via Optimal Transport

Jesse Sun and Dihong Jiang and Yaoliang Yu

2022

DEVIATE: A Deep Learning Variance Testing Framework

Hung Viet Pham and Mijung Kim and Lin Tan and Yaoliang Yu and Nachiappan Nagappan

2021

Conditional Generative Quantile Networks via Optimal Transport and Convex Potentials

Jesse Sun and Dihong Jiang and Yaoliang Yu

2021

Revisiting flow generative models for Out-of-distribution detection

Dihong Jiang and Sun Sun and Yaoliang Yu

2021

-Mutual Information Contrastive Learning

Guojun Zhang and Yiwei Lu and Sun Sun and Hongyu Guo and Yaoliang Yu

2021

Splitting Algorithms for Federated Learning

Saber Malekmohammadi and Kiarash Shaloudegi and Zeou Hu and Yaoliang Yu

2021