
Min-Ling Zhang
ml
extreme classification
multi-label learning
multi-class
other foundations of machine learning
classification and regression
ml: multi-class/multi-label learning & extreme classification ml: semi-supervised learning ml: classification and regression
candidate labels
empirical risk minimization
learning & optimization for cv
long-tail learning
classification and regression; multi-class learning; representation learning
partial label learning; representation learning; knowledge distillation.
weakly supervised learning; partial label learning; long-tailed learning
regression
13
presentations
32
number of views
SHORT BIO
Min-Ling Zhang received the BSc, MSc, and PhD degrees in computer science from Nanjing University, China, in 2001, 2004 and 2007, respectively. Currently, he is a Professor at the School of Computer Science and Engineering, Southeast University, China. His main research interests include machine learning and data mining. In recent years, Dr. Zhang has served as the General Co-Chairs of ACML'18, Program Co-Chairs of PAKDD'19, CCF-ICAI'19, ACML'17, CCFAI'17, PRICAI'16, Senior PC member or Area Chair of AAAI 2017-2020, IJCAI 2017-2022, KDD 2021-2022, ICDM 2015-2022, etc. He is also on the editorial board of IEEE Transactions on Pattern Analysis and Machine Intelligence, ACM Transactions on Intelligent Systems and Technology, Neural Networks, Science China Information Sciences, Frontiers of Computer Science, etc. Dr. Zhang is the Steering Committee Member of ACML and PAKDD, Vice Chair of the CAAI Machine Learning Society, standing committee member of the CCF Artificial Intelligence \& Pattern Recognition Society. He is a Distinguished Member of CCF, CAAI, and Senior Member of ACM, AAAI, IEEE.
Presentations

Partial Label Causal Representation Learning for Instance-Dependent Supervision and Domain Generalization
Yizhi Wang and 2 other authors

Learnware Specification via Label-Aware Neural Embedding
Wei Chen and 2 other authors

Evolutionary Classifier Chain for Multi-Dimensional Classification
Yu-Yang Zhang and 2 other authors

Implicit Relative Labeling-Importance Aware Multi-Label Metric Learning
Jun-Xiang Mao and 2 other authors

Disentangled Partial Label Learning
Wei-Xuan Bao and 2 other authors

Distilling Reliable Knowledge for Instance-Dependent Partial Label Learning
Dong-Dong Wu and 2 other authors

Long-Tailed Partial Label Learning by Head Classifier and Tail Classifier Cooperation
Yuheng Jia and 3 other authors

Can Label-Specific Feature Help Partial-Label Learning?
Ruo-Jing Dong and 3 other authors

Partial-Label Regression
Lei Feng and 4 other authors

End-to-End Probabilistic Label-Specific Feature Learning for Multi-Label Classification
Jun-Yi Hang and 3 other authors

Learning from Noisy Labels with Complementary Loss Functions
Deng-Bao Wang and 3 other authors

Exploiting Unlabeled Data via Partial Label Assignment for Multi-Class Semi-Supervised Learning
Zhen-Ru Zhang and 3 other authors

EAT: Towards Long-Tailed Out-of-Distribution Detection | VIDEO
Tong Wei and 2 other authors