Hello! I am a postdoctoral researcher at MIT CSAIL working with Stefanie Jegelka. I obtained my PhD in Applied Mathematics from Peking University (PKU) in 2023, advised by Yisen Wang, Jiansheng Yang, and Zhouchen Lin. Prior to that, I got my bachelor's degrees from PKU math and phil.
My first-author works received Best ML Paper Award of ECML-PKDD 2021, Silver Best Paper Award of ICML 2021 AdvML workshop, and Spotlight Award at ICML 2024 ICL workshop.

I am generally interested in machine learning and representation learning, with a focus on the following topics:

  • Self-supervised Learning (SSL). SSL is the driving engine for pretraining foundation models. I am mostly interested in theoretically understanding and principled design of SSL (including generative and non-generative models), aimed at uncovering their inherent mechanisms and enhancing model interpretability.
  • Alignment. Powerful LLMs need to be aligned to human purposes with guardrails to avoid being abused. I explore and how to systematically develop robust foundation models against real-world distribution shifts.
  • Neural Representations. I am interested in understanding the inherent representations and feature dynamics of general-purpose neural network backbones, in particular, Transformers and Graph Neural Networks.
Feel free to shoot me an email if you are interested in working with me.

Contact: yifei_w at mit.edu / Google Scholar / Github / X (Twitter)

News

  • 2024.07. Our paper on theoretical understanding of LLM self-correction as in-context alignment received the Spotlight Award (awarded to top 3 papers) at ICML 2024 ICL Workshop.
  • 2024.06. I gave a talk on Non-negative Contrastive Learning at Cohere AI.
  • 2024.05. I visited TU Munich, Germany, and gave a talk on Self-supervised Learning of Identifiable Features.
  • 2024.05. I served as a Session Chair at ICLR 2024.
  • 2024.04. I gave a talk on Non-negative Contrastive Learning at MIT LIDS Tea (slides).
  • 2024.02. I was honored to receive Wenjun Wu Outstanding Ph.D. Dissertation Runner-Up Award (top 14 nation-wide) from CAAI. Wenjun Wu invented Wu's method for automatic theorem proving and pioneered AI research in China. Thanks everyone!
  • 2023.12. I have joined MIT CSAIL as a postdoc.
  • 2023.09. I will be serving as an Area Chair for ICLR 2024.

Papers (* marks equal contribution)

  • A Theoretical Understanding of Self-Correction through In-context Alignment Yifei Wang*, Yuyang Wu*, Zeming Wei, Stefanie Jegelka, Yisen Wang arXiv preprint arXiv:2405.18634
    ICML 2024 Workshop on In-Context Learning (ICL) Spotlight Award (awarded to top 3 papers)
    ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M)
    2024 PDF
  • In-Context Symmetries: Self-Supervised Learning through Contextual World Models Sharut Gupta*, Chenyu Wang*, Yifei Wang*, Tommi Jaakkola, Stefanie Jegelka arXiv preprint arXiv:2405.18193
    ICML 2024 Workshop on In-Context Learning (ICL)
    2024 PDF
  • Understanding the Role of Equivariance in Self-supervised Learning Yifei Wang, Kaiwen Hu, Sharut Gupta, Ziyu Ye, Yisen Wang, Stefanie Jegelka ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M) 2024 PDF
  • Rethinking Invariance in In-context Learning Lizhe Fang*, Yifei Wang*, Khashayar Gatmiry, Lei Fang, Yisen Wang ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M) 2024 PDF
  • A Canonization Perspective on Invariant and Equivariant Learning George Ma*, Yifei Wang*, Derek Lim, Stefanie Jegelka, Yisen Wang arXiv preprint arXiv:2405.18378 2024 PDF
  • On the Role of Attention Masks and LayerNorm in Transformers Xinyi Wu, Amir Ajorlou, Yifei Wang, Stefanie Jegelka, Ali Jadbabaie arXiv preprint arXiv:2405.18781 2024 PDF
  • A Theoretical Understanding of Self-Correction through In-context Alignment Yifei Wang*, Yuyang Wu*, Zeming Wei, Stefanie Jegelka, Yisen Wang arXiv preprint arXiv:2405.18634
    ICML 2024 Workshop on In-Context Learning (ICL) Spotlight Award (awarded to top 3 papers)
    ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M)
    2024 PDF
  • In-Context Symmetries: Self-Supervised Learning through Contextual World Models Sharut Gupta*, Chenyu Wang*, Yifei Wang*, Tommi Jaakkola, Stefanie Jegelka arXiv preprint arXiv:2405.18193
    ICML 2024 Workshop on In-Context Learning (ICL)
    2024 PDF
  • Understanding the Role of Equivariance in Self-supervised Learning Yifei Wang, Kaiwen Hu, Sharut Gupta, Ziyu Ye, Yisen Wang, Stefanie Jegelka ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M) 2024 PDF
  • Rethinking Invariance in In-context Learning Lizhe Fang*, Yifei Wang*, Khashayar Gatmiry, Lei Fang, Yisen Wang ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M) 2024 PDF
  • Look Ahead or Look Around? A Theoretical Comparison Between Autoregressive and Masked Pretraining Qi Zhang, Tianqi Du, Haotian Huang, Yifei Wang, Yisen Wang ICML 2024 2024 PDF | Code
  • OODRobustBench: a benchmark and large-scale analysis of adversarial robustness under distribution shift Lin Li, Yifei Wang, Chawin Sitawarin, Michael W. Spratling ICML 2024 2024 PDF | Code | Leaderboard
  • On the Duality Between Sharpness-Aware Minimization and Adversarial Training Yihao Zhang, Hangzhou He, Jingyu Zhu, Huanran Chen, Yifei Wang, Zeming Wei ICML 2024 2024 PDF | Code
  • Non-negative Contrastive Learning Yifei Wang*, Qi Zhang*, Yaoyu Guo, Yisen Wang ICLR 2024 2024 PDF | Code | Slides
  • Do Generated Data Always Help Contrastive Learning? Yifei Wang*, Jizhe Zhang*, Yisen Wang ICLR 2024 2024 PDF | Code | Featured on Sync (CN)
  • On the Role of Discrete Tokenization in Visual Representation Learning Tianqi Du*, Yifei Wang*, Yisen Wang ICLR 2024 (Spotlight) 2024 PDF | Code
  • How to Craft Backdoors with Unlabeled Data Alone? Yifei Wang*, Wenhan Ma*, Stefanie Jegelka, Yisen Wang ICLR 2024 Workshop on Navigating and Addressing Data Problems for Foundation Models (DPFM) 2024 PDF
  • Virtual Classifier: A Reversed Approach for Robust Image Evaluation Jizhe Zhang*, Yifei Wang*, Yisen Wang ICLR 2024 Workshop on Navigating and Addressing Data Problems for Foundation Models (DPFM) 2024 PDF
  • Balance, Imbalance, and Rebalance: Understanding Robust Overfitting from a Minimax Game Perspective Yifei Wang*, Liangchen Li*, Jiansheng Yang, Zhouchen Lin, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • Adversarial Examples Are Not Real Features Ang Li*, Yifei Wang*, Yiwen Guo, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • Architecture Matters: Uncovering Implicit Mechanisms in Graph Contrastive Learning Xiaojun Guo*, Yifei Wang*, Zeming Wei, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • Identifiable Contrastive Learning with Automatic Feature Importance Discovery Qi Zhang*, Yifei Wang*, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • Laplacian Canonization: A Minimalist Approach to Sign and Basis Invariant Spectral Embedding George Ma*, Yifei Wang*, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • On the Generalization of Multi-modal Contrastive Learning Qi Zhang*, Yifei Wang*, Yisen Wang ICML 2023 2023 PDF | Code
  • Rethinking Weak Supervision in Helping Contrastive Representation Learning Jingyi Cui*, Weiran Huang*, Yifei Wang*, Yisen Wang ICML 2023 2023 PDF
  • CFA: Class-wise Calibrated Fair Adversarial Training Zeming Wei, Yifei Wang, Yiwen Guo, Yisen Wang CVPR 2023 2023 PDF | Code
  • Equilibrium Image Denoising with Implicit Differentiation Qi Chen, Yifei Wang, Zhengyang Geng, Yisen Wang, Jiansheng Yang, and Zhouchen Lin IEEE Transactions on Image Processing (TIP) 2023 PDF
  • A Message Passing Perspective on Learning Dynamics of Contrastive Learning Yifei Wang*, Qi Zhang*, Tianqi Du, Jiansheng Yang, Zhouchen Lin, Yisen Wang ICLR 2023 2023 PDF | Code | Slides | Blog
  • Towards a Unified Theoretical Understanding of Non-contrastive Learning via Rank Differential Mechanism Zhijian Zhuo*, Yifei Wang*, Jinwen Ma, Yisen Wang ICLR 2023 2023 PDF | Code
  • Rethinking the Effect of Data Augmentation in Adversarial Contrastive Learning Rundong Luo*, Yifei Wang*, Yisen Wang ICLR 2023 2023 PDF | Code
  • ContraNorm: A Contrastive Learning Perspective on Oversmoothing and Beyond Xiaojun Guo*, Yifei Wang*, Tianqi Du*, Yisen Wang ICLR 2023 2023 PDF | Code
  • Unbiased Stochastic Proximal Solver for Graph Neural Networks with Equilibrium States Mingjie Li, Yifei Wang, Yisen Wang, Zhouchen Lin ICLR 2023 2023 PDF
  • What Contrastive Learning Learns Beyond Class-wise Features? Xingyuming Liu, Yifei Wang, Yisen Wang ICLR 2023 Workshop on Mathematical and Empirical Understanding of Foundation Models (ME-FoMo) 2023 PDF
  • Rethinking the Necessity of Labels in Backdoor Defense Zidi Xiong, Dongxian Wu, Yifei Wang, Yisen Wang ICLR 2023 Workshop on Backdoor Attacks and Defenses in Machine Learning (BANDS) 2023 PDF
  • On the Connection between Invariant Learning and Adversarial Training for Out-of-Distribution Generalization Shiji Xin, Yifei Wang, Jingtong Su, Yisen Wang AAAI 2023 (Oral) 2023 PDF
  • How Mask Matters: Towards Theoretical Understandings of Masked Autoencoders Qi Zhang*, Yifei Wang*, Yisen Wang NeurIPS 2022 (Spotlight, Top 5%) 2022 PDF | Code | Slides
  • Improving Out-of-distribution Robustness by Adversarial Training with Structured Priors Qixun Wang*, Yifei Wang*, Hong Zhu, Yisen Wang NeurIPS 2022 (Spotlight, Top 5%) 2022 PDF | Code | Slides
  • When Adversarial Training Meets Vision Transformers: Recipes from Training to Architecture Yichuan Mo, Dongxian Wu, Yifei Wang, Yiwen Guo, Yisen Wang NeurIPS 2022 (Spotlight, Top 5%) 2022 PDF | Code
  • Variational Energy-Based Models: A Probabilistic Framework for Contrastive Self-Supervised Learning Tianqi Du*, Yifei Wang*, Weiran Huang, Yisen Wang NeurIPS 2022 SSL Workshop 2022 PDF
  • AggNCE: Asymptotically Identifiable Contrastive Learning Jingyi Cui*, Weiran Huang*, Yifei Wang, Yisen Wang NeurIPS 2022 SSL Workshop (Oral) 2022 PDF
  • Efficient and Scalable Implicit Graph Neural Networks with Virtual Equilibrium Qi Chen, Yifei Wang, Yisen Wang, Jianlong Chang, Qi Tian, Jiansheng Yang, Zhouchen Lin IEEE BigData 2022 (Long Talk) 2022 PDF
  • Optimization-Induced Graph Implicit Nonlinear Diffusion Qi Chen, Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin ICML 2022 2022 PDF | Code
  • G2CN: Graph Gaussian Convolution Networks with Concentrated Graph Filters Mingjie Li, Xiaojun Guo, Yifei Wang, Yisen Wang, Zhouchen Lin ICML 2022 2022 PDF
  • Chaos is a Ladder: A New Theoretical Understanding of Contrastive Learning via Augmentation Overlap Yifei Wang*, Qi Zhang*, Yisen Wang, Jiansheng Yang, Zhouchen Lin ICLR 2022 2022 PDF | Code | Slides
  • A Unified Contrastive Energy-based Model for Understanding the Generative Ability of Adversarial Training Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin ICLR 2022 (πŸ† Silver Best Paper Award @ ICML 2021 AdvML workshop) 2022 PDF | Slides | Award
  • Residual Relaxation for Multi-view Representation Learning Yifei Wang, Zhengyang Geng, Feng Jiang, Chuming Li, Yisen Wang, Jiansheng Yang, Zhouchen Lin NeurIPS 2021 2021 PDF | Slides | Blog
  • Dissecting the Diffusion Process in Linear Graph Convolutional Networks Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin NeurIPS 2021 2021 PDF | Code | Slides | Blog
  • Reparameterized Sampling for Generative Adversarial Networks Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin ECML-PKDD 2021 2021 (πŸ† Best ML Paper Award (1/685) & Invited to Machine Learning Journal) PDF | Code | Slides | Media | Talk | Award
  • Train Once, and Decode as You Like Chao Tian, Yifei Wang, Hao Cheng, Yijiang Lian, Zhihua Zhang COLING 2020 2020 PDF
  • A Theoretical Understanding of Self-Correction through In-context Alignment Yifei Wang*, Yuyang Wu*, Zeming Wei, Stefanie Jegelka, Yisen Wang arXiv preprint arXiv:2405.18634
    ICML 2024 Workshop on In-Context Learning (ICL) Spotlight Award (awarded to top 3 papers)
    ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M)
    2024 PDF
  • In-Context Symmetries: Self-Supervised Learning through Contextual World Models Sharut Gupta*, Chenyu Wang*, Yifei Wang*, Tommi Jaakkola, Stefanie Jegelka arXiv preprint arXiv:2405.18193
    ICML 2024 Workshop on In-Context Learning (ICL)
    2024 PDF
  • Understanding the Role of Equivariance in Self-supervised Learning Yifei Wang, Kaiwen Hu, Sharut Gupta, Ziyu Ye, Yisen Wang, Stefanie Jegelka ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M) 2024 PDF
  • Rethinking Invariance in In-context Learning Lizhe Fang*, Yifei Wang*, Khashayar Gatmiry, Lei Fang, Yisen Wang ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M) 2024 PDF
  • Look Ahead or Look Around? A Theoretical Comparison Between Autoregressive and Masked Pretraining Qi Zhang, Tianqi Du, Haotian Huang, Yifei Wang, Yisen Wang ICML 2024 2024 PDF | Code
  • Non-negative Contrastive Learning Yifei Wang*, Qi Zhang*, Yaoyu Guo, Yisen Wang ICLR 2024 2024 PDF | Code | Slides
  • Do Generated Data Always Help Contrastive Learning? Yifei Wang*, Jizhe Zhang*, Yisen Wang ICLR 2024 2024 PDF | Code | Featured on Sync (CN)
  • On the Role of Discrete Tokenization in Visual Representation Learning Tianqi Du*, Yifei Wang*, Yisen Wang ICLR 2024 (Spotlight) 2024 PDF | Code
  • How to Craft Backdoors with Unlabeled Data Alone? Yifei Wang*, Wenhan Ma*, Stefanie Jegelka, Yisen Wang ICLR 2024 Workshop on Navigating and Addressing Data Problems for Foundation Models (DPFM) 2024 PDF
  • Virtual Classifier: A Reversed Approach for Robust Image Evaluation Jizhe Zhang*, Yifei Wang*, Yisen Wang ICLR 2024 Workshop on Navigating and Addressing Data Problems for Foundation Models (DPFM) 2024 PDF
  • Architecture Matters: Uncovering Implicit Mechanisms in Graph Contrastive Learning Xiaojun Guo*, Yifei Wang*, Zeming Wei, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • Identifiable Contrastive Learning with Automatic Feature Importance Discovery Qi Zhang*, Yifei Wang*, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • On the Generalization of Multi-modal Contrastive Learning Qi Zhang*, Yifei Wang*, Yisen Wang ICML 2023 2023 PDF | Code
  • Rethinking Weak Supervision in Helping Contrastive Representation Learning Jingyi Cui*, Weiran Huang*, Yifei Wang*, Yisen Wang ICML 2023 2023 PDF
  • A Message Passing Perspective on Learning Dynamics of Contrastive Learning Yifei Wang*, Qi Zhang*, Tianqi Du, Jiansheng Yang, Zhouchen Lin, Yisen Wang ICLR 2023 2023 PDF | Code | Slides | Blog
  • Towards a Unified Theoretical Understanding of Non-contrastive Learning via Rank Differential Mechanism Zhijian Zhuo*, Yifei Wang*, Jinwen Ma, Yisen Wang ICLR 2023 2023 PDF | Code
  • Rethinking the Effect of Data Augmentation in Adversarial Contrastive Learning Rundong Luo*, Yifei Wang*, Yisen Wang ICLR 2023 2023 PDF | Code
  • ContraNorm: A Contrastive Learning Perspective on Oversmoothing and Beyond Xiaojun Guo*, Yifei Wang*, Tianqi Du*, Yisen Wang ICLR 2023 2023 PDF | Code
  • What Contrastive Learning Learns Beyond Class-wise Features? Xingyuming Liu, Yifei Wang, Yisen Wang ICLR 2023 Workshop on Mathematical and Empirical Understanding of Foundation Models (ME-FoMo) 2023 PDF
  • Rethinking the Necessity of Labels in Backdoor Defense Zidi Xiong, Dongxian Wu, Yifei Wang, Yisen Wang ICLR 2023 Workshop on Backdoor Attacks and Defenses in Machine Learning (BANDS) 2023 PDF
  • How Mask Matters: Towards Theoretical Understandings of Masked Autoencoders Qi Zhang*, Yifei Wang*, Yisen Wang NeurIPS 2022 (Spotlight, Top 5%) 2022 PDF | Code | Slides
  • Variational Energy-Based Models: A Probabilistic Framework for Contrastive Self-Supervised Learning Tianqi Du*, Yifei Wang*, Weiran Huang, Yisen Wang NeurIPS 2022 SSL Workshop 2022 PDF
  • AggNCE: Asymptotically Identifiable Contrastive Learning Jingyi Cui*, Weiran Huang*, Yifei Wang, Yisen Wang NeurIPS 2022 SSL Workshop (Oral) 2022 PDF
  • Chaos is a Ladder: A New Theoretical Understanding of Contrastive Learning via Augmentation Overlap Yifei Wang*, Qi Zhang*, Yisen Wang, Jiansheng Yang, Zhouchen Lin ICLR 2022 2022 PDF | Code | Slides
  • A Unified Contrastive Energy-based Model for Understanding the Generative Ability of Adversarial Training Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin ICLR 2022 (πŸ† Silver Best Paper Award @ ICML 2021 AdvML workshop) 2022 PDF | Slides | Award
  • Residual Relaxation for Multi-view Representation Learning Yifei Wang, Zhengyang Geng, Feng Jiang, Chuming Li, Yisen Wang, Jiansheng Yang, Zhouchen Lin NeurIPS 2021 2021 PDF | Slides | Blog
  • Reparameterized Sampling for Generative Adversarial Networks Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin ECML-PKDD 2021 2021 (πŸ† Best ML Paper Award (1/685). Invited to Machine Learning Journal) PDF | Code | Slides | Media | Talk | Award
  • A Theoretical Understanding of Self-Correction through In-context Alignment Yifei Wang*, Yuyang Wu*, Zeming Wei, Stefanie Jegelka, Yisen Wang arXiv preprint arXiv:2405.18634
    ICML 2024 Workshop on In-Context Learning (ICL) Spotlight Award (awarded to top 3 papers)
    ICML 2024 Workshop on Theoretical Foundations of Foundation Models (TF2M)
    2024 PDF
  • OODRobustBench: a benchmark and large-scale analysis of adversarial robustness under distribution shift Lin Li, Yifei Wang, Chawin Sitawarin, Michael W. Spratling ICML 2024 2024 PDF | Code | Leaderboard
  • On the Duality Between Sharpness-Aware Minimization and Adversarial Training Yihao Zhang, Hangzhou He, Jingyu Zhu, Huanran Chen, Yifei Wang, Zeming Wei ICML 2024 2024 PDF | Code
  • How to Craft Backdoors with Unlabeled Data Alone? Yifei Wang*, Wenhan Ma*, Stefanie Jegelka, Yisen Wang ICLR 2024 Workshop on Navigating and Addressing Data Problems for Foundation Models (DPFM) 2024 PDF
  • Adversarial Examples Are Not Real Features Ang Li*, Yifei Wang*, Yiwen Guo, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • Balance, Imbalance, and Rebalance: Understanding Robust Overfitting from a Minimax Game Perspective Yifei Wang*, Liangchen Li*, Jiansheng Yang, Zhouchen Lin, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • CFA: Class-wise Calibrated Fair Adversarial Training Zeming Wei, Yifei Wang, Yiwen Guo, Yisen Wang CVPR 2023 2023 PDF | Code
  • Rethinking the Effect of Data Augmentation in Adversarial Contrastive Learning Rundong Luo*, Yifei Wang*, Yisen Wang ICLR 2023 2023 PDF
  • Rethinking the Necessity of Labels in Backdoor Defense Zidi Xiong, Dongxian Wu, Yifei Wang, Yisen Wang ICLR 2023 Workshop on Backdoor Attacks and Defenses in Machine Learning (BANDS) 2023 PDF
  • On the Connection between Invariant Learning and Adversarial Training for Out-of-Distribution Generalization Shiji Xin, Yifei Wang, Jingtong Su, Yisen Wang AAAI 2023 (Oral) 2023 PDF
  • Improving Out-of-distribution Robustness by Adversarial Training with Structured Priors Qixun Wang*, Yifei Wang*, Hong Zhu, Yisen Wang NeurIPS 2022 (Spotlight, Top 5%) 2022 PDF | Code | Slides
  • When Adversarial Training Meets Vision Transformers: Recipes from Training to Architecture Yichuan Mo, Dongxian Wu, Yifei Wang, Yiwen Guo, Yisen Wang NeurIPS 2022 (Spotlight, Top 5%) 2022 PDF | Code
  • A Unified Contrastive Energy-based Model for Understanding the Generative Ability of Adversarial Training Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin ICLR 2022 (πŸ† Silver Best Paper Award @ ICML 2021 AdvML workshop) 2022 PDF | Slides | Award
  • Laplacian Canonization: A Minimalist Approach to Sign and Basis Invariant Spectral Embedding George Ma*, Yifei Wang*, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • Architecture Matters: Uncovering Implicit Mechanisms in Graph Contrastive Learning Xiaojun Guo*, Yifei Wang*, Zeming Wei, Yisen Wang NeurIPS 2023 2023 PDF | Code
  • ContraNorm: A Contrastive Learning Perspective on Oversmoothing and Beyond Xiaojun Guo*, Yifei Wang*, Tianqi Du*, Yisen Wang ICLR 2023 2023 PDF
  • Unbiased Stochastic Proximal Solver for Graph Neural Networks with Equilibrium States Mingjie Li, Yifei Wang, Yisen Wang, Zhouchen Lin ICLR 2023 2023 PDF
  • Efficient and Scalable Implicit Graph Neural Networks with Virtual Equilibrium Qi Chen, Yifei Wang, Yisen Wang, Jianlong Chang, Qi Tian, Jiansheng Yang, Zhouchen Lin IEEE BigData 2022 (Long Talk) 2022 PDF
  • Optimization-Induced Graph Implicit Nonlinear Diffusion Qi Chen, Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin ICML 2022 2022 PDF | Code
  • G2CN: Graph Gaussian Convolution Networks with Concentrated Graph Filters Mingjie Li, Xiaojun Guo, Yifei Wang, Yisen Wang, Zhouchen Lin ICML 2022 2022 PDF
  • Dissecting the Diffusion Process in Linear Graph Convolutional Networks Yifei Wang, Yisen Wang, Jiansheng Yang, Zhouchen Lin NeurIPS 2021 2021 PDF | Code | Slides | Blog

Selected Awards

Spotlight Award (top 3), ICML 2024 ICL workshop, 2024.
Wenjun Wu Outstanding Ph.D. Dissertation Runner-Up Award (top 14 nation-wide), CAAI, 2024
Excellent Graduate (top 1 per department), Beijing, 2023
Excellent Graduate, Peking University, 2023
Baidu Scholarship Runner-Up (top 20 nation-wide), Baidu Inc, 2022
National Scholarship (top 0.1% nation-wide), China, 2021, 2022
Principal Scholarship (top 1% university-wide), Peking University, 2022
Best ML Paper Award (1/685), ECML-PKDD 2021, 2021
Silver Best Paper Award, ICML 2021 AdvML workshop, 2021

Professional Services

Reviewer:
  • ML Conferences: NeurIPS (2022, 2023), ICML (2022), AISTATS (2024), LoG (2023), ECML-PKDD (2022)
  • Other conferences: CVPR (2023, 2024), ICCV (2023), ACL (2020, 2021)
  • Journal: IEEE TPAMI, TMLR
Area Chair:
  • Area Chair & Session Chair at ICLR 2024