1 code implementation • 24 Dec 2024 • Xiaohao Liu, Xiaobo Xia, Zhuo Huang, Tat-Seng Chua
Multi-modal learning has achieved remarkable success by integrating information from various modalities, achieving superior performance in tasks like recognition and retrieval compared to uni-modal approaches.
2 code implementations • ACM Transactions on Multimedia Computing, Communications, and Applications 2024 • Mingyu Li, Tao Zhou, Zhuo Huang, Jian Yang, Jie Yang, Chen Gong
Nowadays, class-mismatch problem has drawn intensive attention in Semi-Supervised Learning (SSL), where the classes of labeled data are assumed to be only a subset of the classes of unlabeled data.
2 code implementations • 5 Dec 2023 • Zhuo Huang, Chang Liu, Yinpeng Dong, Hang Su, Shibao Zheng, Tongliang Liu
Concretely, by estimating a transition matrix that captures the probability of one class being confused with another, an instruction containing a correct exemplar and an erroneous one from the most probable noisy class can be constructed.
1 code implementation • NeurIPS 2023 • Zhuo Huang, Li Shen, Jun Yu, Bo Han, Tongliang Liu
Therefore, the label guidance on labeled data is hard to be propagated to unlabeled data.
no code implementations • 25 Oct 2023 • Zhuo Huang, Muyang Li, Li Shen, Jun Yu, Chen Gong, Bo Han, Tongliang Liu
By fully exploring both variant and invariant parameters, our EVIL can effectively identify a robust subnetwork to improve OOD generalization.
4 code implementations • CVPR 2023 • Zhuo Huang, Miaoxi Zhu, Xiaobo Xia, Li Shen, Jun Yu, Chen Gong, Bo Han, Bo Du, Tongliang Liu
Experimentally, we simulate photon-limited corruptions using CIFAR10/100 and ImageNet30 datasets and show that SharpDRO exhibits a strong generalization ability against severe corruptions and exceeds well-known baseline methods with large performance gains.
no code implementations • journal 2023 • Zhuo Huang, Xiaobo Xia, Li Shen, Jun Yu, Chen Gong, Bo Han, Tongliang Liu
Robust generalization aims to deal with the most challenging data distributions which are rarely presented in training set and contain severe noise corruptions.
1 code implementation • 7 Jul 2022 • Zhuo Huang, Xiaobo Xia, Li Shen, Bo Han, Mingming Gong, Chen Gong, Tongliang Liu
Machine learning models are vulnerable to Out-Of-Distribution (OOD) examples, and such a problem has drawn much attention.
no code implementations • 10 Dec 2021 • Peter Reinhard Hansen, Zhuo Huang, Chen Tong, Tianyi Wang
The volatility shock endows the exponentially affine SDF with a compensation for volatility risk.
no code implementations • 10 Dec 2021 • Chen Tong, Peter Reinhard Hansen, Zhuo Huang
We introduce a new volatility model for option pricing that combines Markov switching with the Realized GARCH framework.
no code implementations • NeurIPS 2021 • Zhuo Huang, Chao Xue, Bo Han, Jian Yang, Chen Gong
Universal Semi-Supervised Learning (UniSSL) aims to solve the open-set problem where both the class distribution (i. e., class set) and feature distribution (i. e., feature domain) are different between labeled dataset and unlabeled dataset.
no code implementations • 27 Nov 2020 • Zhuo Huang, Ying Tai, Chengjie Wang, Jian Yang, Chen Gong
Semi-Supervised Learning (SSL) with mismatched classes deals with the problem that the classes-of-interests in the limited labeled data is only a subset of the classes in massive unlabeled data.
no code implementations • 29 Nov 2019 • Weikaixin Kong, Xinyu Tu, Zhengwei Xie, Zhuo Huang
We used machine learning methods to predict NaV1. 7 inhibitors and found the model RF-CDK that performed best on the imbalanced dataset.