Co-teaching: Robust training of deep neural networks with extremely noisy labels B Han, Q Yao, X Yu, G Niu, M Xu, W Hu, I Tsang, M Sugiyama Advances in neural information processing systems 31, 2018 | 2071 | 2018 |
Speedup matrix completion with side information: Application to multi-label learning M Xu, R Jin, ZH Zhou Advances in neural information processing systems 26, 2013 | 325 | 2013 |
Progressive identification of true labels for partial-label learning J Lv, M Xu, L Feng, G Niu, X Geng, M Sugiyama International conference on machine learning, 6500-6510, 2020 | 168 | 2020 |
Provably consistent partial-label learning L Feng, J Lv, B Han, M Xu, G Niu, X Geng, B An, M Sugiyama Advances in neural information processing systems 33, 10948-10960, 2020 | 138 | 2020 |
Sigua: Forgetting may make learning with noisy labels more robust B Han, G Niu, X Yu, Q Yao, M Xu, I Tsang, M Sugiyama International Conference on Machine Learning, 4006-4016, 2020 | 121 | 2020 |
Active feature acquisition with supervised matrix completion SJ Huang, M Xu, MK Xie, M Sugiyama, G Niu, S Chen Proceedings of the 24th ACM SIGKDD International Conference on Knowledge …, 2018 | 55 | 2018 |
Positive-Unlabeled Learning from Imbalanced Data. G Su, W Chen, M Xu IJCAI, 2995-3001, 2021 | 50 | 2021 |
Incomplete Label Distribution Learning. M Xu, ZH Zhou IJCAI, 3175-3181, 2017 | 50 | 2017 |
CUR algorithm for partially observed matrices M Xu, R Jin, ZH Zhou International Conference on Machine Learning, 1412-1421, 2015 | 38 | 2015 |
Multi-label learning with PRO loss M Xu, YF Li, ZH Zhou Proceedings of the AAAI Conference on Artificial Intelligence 27 (1), 998-1004, 2013 | 34 | 2013 |
Self-Supervised Adversarial Distribution Regularization for Medication Recommendation. Y Wang, W Chen, D Pi, L Yue, S Wang, M Xu IJCAI, 3134-3140, 2021 | 29 | 2021 |
Robust multi-label learning with PRO loss M Xu, YF Li, ZH Zhou IEEE Transactions on Knowledge and Data Engineering 32 (8), 1610-1624, 2019 | 24 | 2019 |
On the robustness of average losses for partial-label learning J Lv, B Liu, L Feng, N Xu, M Xu, B An, G Niu, X Geng, M Sugiyama IEEE Transactions on Pattern Analysis and Machine Intelligence, 2023 | 21 | 2023 |
Learning from group supervision: the impact of supervision deficiency on multi-label learning M Xu, LZ Guo Science China Information Sciences 64, 1-13, 2021 | 21 | 2021 |
Pointwise binary classification with pairwise confidence comparisons L Feng, S Shu, N Lu, B Han, M Xu, G Niu, B An, M Sugiyama International Conference on Machine Learning, 3252-3262, 2021 | 19 | 2021 |
Pumpout: A meta approach for robustly training deep neural networks with noisy labels B Han, G Niu, J Yao, X Yu, M Xu, I Tsang, M Sugiyama | 18 | 2018 |
Matrix co-completion for multi-label classification with missing features and labels M Xu, G Niu, B Han, IW Tsang, ZH Zhou, M Sugiyama arXiv preprint arXiv:1805.09156, 2018 | 18 | 2018 |
Fair representation learning: An alternative to mutual information J Liu, Z Li, Y Yao, F Xu, X Ma, M Xu, H Tong Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and …, 2022 | 17 | 2022 |
Revisiting sample selection approach to positive-unlabeled learning: Turning unlabeled data into positive rather than negative M Xu, B Li, G Niu, B Han, M Sugiyama arXiv preprint arXiv:1901.10155, 2019 | 13 | 2019 |
Pre-training in medical data: A survey Y Qiu, F Lin, W Chen, M Xu Machine Intelligence Research 20 (2), 147-179, 2023 | 12 | 2023 |