Tongliang Liu

Mohamed bin Zayed University of Artificial Intelligence

Names

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Tongliang Liu (Preferred)

Emails

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****@sydney.edu.au

Education & Career History

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Associate Professor
Mohamed bin Zayed University of Artificial Intelligence (mbzuai.ac.ae)
20222023
 
Lecturer
University of Sydney (sydney.edu.au)
20172021
 
Lecturer
University of Technology Sydney (uts.edu.au)
20162017
 
PhD
University of Technology Sydney (uts.edu.au)
20122016
 

Advisors, Relations & Conflicts

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Coauthor
Quanming Yao
****@4paradigm.com
2020Present
 
Coauthor
Yang Liu
****@ucsc.edu
2020Present
 
Coauthor
Masashi Sugiyama
****@k.u-tokyo.ac.jp
2018Present
 
Coauthor
Gang Niu
****@riken.jp
2018Present
 
Coauthor
Bo Han
****@comp.hkbu.edu.hk
2018Present
 
Coauthor
Cheng Deng
****@mail.xidian.edu.cn
2018Present
 
Coauthor
Kun Zhang
****@cmu.edu
2015Present
 
Coauthor
Mingming Gong
****@unimelb.edu.au
2014Present
 
Coauthor
Chen Gong
****@njust.edu.cn
2014Present
 
Coauthor
Nannan Wang
****@xidian.edu.cn
2012Present
 
PhD Advisee
Erkun Yang
****@med.unc.edu
20182020
 
PhD Advisor
Dacheng Tao
****@sydney.edu.au
20122016
 

Expertise

For each line, enter comma-separated keyphrases representing an intersection of your interests. Think of each line as a query for papers in which you would have expertise and interest. For example: deep learning, RNNs, dependency parsing

Learning with noisy labels
Present
 
Weakly supervised learning
Present
 
Adversarial learning
Present
 
Transfer learning
Present