1. Semi-supervised learning with dropouts;Abhishek;Expert Systems with Applications,2023
2. F-domain adversarial learning: Theory and algorithms;Acuna,2021
3. Visualization and visual analytics approaches for image and video datasets: A survey;Afzal;ACM Transactions on Interactive Intelligent Systems,2023
4. Cheng, D., Liu, T., Ning, Y., Wang, N., Han, B., Niu, G., Gao, X., & Sugiyama, M. (2022). Instance-Dependent Label-Noise Learning with Manifold-Regularized Transition Matrix Estimation. In IEEE/CVF conference on computer vision and pattern recognition (pp. 16609–16618).
5. HOMDA: High-order moment-based domain alignment for unsupervised domain adaptation;Dan;Knowledge-Based Systems,2023