Yutong Wang
- Assistant Professor of Computer Science
Education
- Ph.D. Electrical & Computer Engineering, University of Michigan, Ann Arbor
- M.A. Mathematics, University of California, Davis
- B.S.E. Electrical Engineering, University of Michigan, Ann Arbor
Research Interests
Awards
- UM Postdoctoral Association Conference Award, 2023
- NeurIPS Scholar Award, 2022
- Honorable Mention for Outstanding Graduate Student Instructors and Instructional Aides NIH-sponsored travel award for NeurIPS Conference workshop, 2021
- NeurIPS 2019 Conference workshop: “Learning Meaningful Representations of Life,” 2019
- The Rollin M. Gerstacker Foundation Fellowship, 2016
Publications
- Yutong Wang and Clayton Scott. “Unified Binary and Multiclass Margin-Based Classification”. Journal of Machine Learning Research 25.143 (2024) pp. 1–51.
- Pengyu Li , Xiao Li , Yutong Wang, and Qing Qu. “Neural Collapse in Multi-label Learning with Pick-all-label Loss”. International Conference on Machine Learning. 2024.
- Yutong Wang, Rishi Sonthalia, and Wei Hu. “Near-Interpolators: Rapid Norm Growth and the Trade-Off be- tween Interpolation and Generalization”. Artificial Intelligence and Statistics. 2024.
- Zhiwei Xu, Yutong Wang, Spencer Frei, Gal Vardi, and Wei Hu. “Benign Overfitting and Grokking in ReLU Networks for XOR Cluster Data”. International Conference on Learning Representations. 2024.
- Yutong Wang and Clayton Scott. “On Classification-Calibration of Gamma-Phi Losses”. Conference on Learning Theory. 2023.
- Yutong Wang and Clayton Scott. “Consistent Interpolating Ensembles via the Manifold-Hilbert Kernel”. Neural Information Processing Systems. 2022.
- Jianxin Zhang, Yutong Wang, and Clayton Scott. “Learning from Label Proportions by Learning with Label Noise”. Neural Information Processing Systems. 2022.
- Yutong Wang and Clayton Scott. “VC dimension of partially quantized neural networks in the overparametrized regime”. International Conference on Learning Representations. 2022.
- Yutong Wang and Clayton Scott. “An exact solver for the Weston-Watkins SVM subproblem”. In: International Conference on Machine Learning. 2021.
- Yutong Wang and Clayton Scott. “Weston-Watkins Hinge Loss and Ordered Partitions”. In: Neural Informa- tion Processing Systems. 2020.
- Tasha Thong, Yutong Wang, Michael Brooks, Christopher Lee, Clayton Scott, Laura Balzano, Max Wicha, and Justin Colacino. “Hybrid stem cell states: insights into the relationship between mammary development and breast cancer using single-cell transcriptomics”. In: Frontiers in Cell and Developmental Biology 8 (2020), p. 288.
Grants
NSF CISE Medium, Award # 2312842 Collaborative Research: RI: Medium: Principles for Optimization, Generalization, and Transferability via Deep Neural Collapse, Budget: $1,200,000, Period Covered: 10/01/2023 - 09/30/2026 PI: Zhihui Zhu, Co-PI: Jeremias Sulam, Co-PI: Qing Qu, Senior Personnel: Yutong Wang