Jongha Jon Ryu

Postdoctoral Associate at MIT

jon.jpg

Room 36-677

50 Vassar St

Cambridge, MA 02139

I am currently a postdoctoral associate at MIT, hosted by Gregory W. Wornell. Prior to joining MIT, I received my Ph.D. in Electrical Engineering from UC San Diego, where I was fortunate to be advised by Young-Han Kim and Sanjoy Dasgupta. My graduate study was generously supported by the Kwanjeong Educational Foundation. Before the graduate study, I received my B.S. in Electrical and Computer Engineering and B.S. in Mathematical Sciences (with minor in Physics) with the highest distinction from Seoul National University in 2015.

I am interested in a broad range of topics related to learning from data, both in theory and practice. My recent research focuses on:

  • New machine learning techniques for scalable scientific simulation
    • a parametric framework for operator SVD (NeuralSVD [ICML2024a])
    • variations and applications (work in progress)
  • New techniques for probabilistic (generative) models
  • New techniques and perspectives for uncertainty quantification

As an information theorist by training, I enjoy doing research by simplifying intricate ideas, unifying concepts, and generalizing them to address complex problems.

Check out my resume for more information.

news

May 03, 2025 Two papers, one Spotlight (top 2.6%) and one poster, accepted at ICML 2025, and one paper accepted at COLT 2025!
Oct 23, 2024 In this fall, I have given talks on NeuralSVD at MERL, KAIST, KIAS, and Flatiron Institute.
Sep 25, 2024 One paper accepted at NeurIPS 2024!
Aug 21, 2024 One paper accepted at IEEE Transactions on Information Theory!
May 01, 2024 Two papers, one Spotlight (top 3.5%) and one poster, accepted at ICML 2025!

selected publications

  1. TIT
    Nearest neighbor density functional estimation from inverse Laplace transform
    IEEE Trans. Inf. Theory, February 2022
  2. TIT
    On Confidence Sequences for Bounded Random Processes via Universal Gambling Strategies
    J. Jon Ryu, and Alankrita Bhatt
    IEEE Trans. Inf. Theory, February 2024
  3. ICML
    Operator SVD with Neural Networks via Nested Low-Rank Approximation
    J. Jon RyuXiangxiang Xu, H. S. Melichan Erol, Yuheng BuLizhong Zheng, and Gregory W. Wornell
    In Proc. Int. Conf. Mach. Learn. (ICML) , July 2024
  4. ICML
    Gambling-Based Confidence Sequences for Bounded Random Vectors
    J. Jon Ryu, and Gregory W. Wornell
    In Proc. Int. Conf. Mach. Learn. (ICML) , July 2024
    Spotlight (top 3.5%)
  5. ICML
    A Unified View on Learning Unnormalized Distributions via Noise-Contrastive Estimation
    J. Jon RyuAbhin Shah, and Gregory W. Wornell
    In Proc. Int. Conf. Mach. Learn. (ICML) , July 2025
  6. ICML
    Score-of-Mixture Training: Training One-Step Generative Models Made Simple
    Tejas Jayashankar*J. Jon Ryu*, and Gregory W. Wornell
    In Proc. Int. Conf. Mach. Learn. (ICML) , July 2025
    Spotlight (top 2.6%)
  7. COLT
    Improved Offline Contextual Bandits with Second-Order Bounds: Betting and Freezing
    J. Jon RyuJeongyeol Kwon, Benjamin Koppe, and Kwang-Sung Jun
    In Conf. Learn. Theory (COLT) , July 2025