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Jungeum Kim

Machine Learning for everyone

About me

I am an Assistant Professor in the Statistics Department at North Carolina State University Currently, I am interested in bridging statistical principles with
cutting-edge advancements in machine learning and AI. I was a Principal Researcher at the University of Chicago Booth School of Business, where I worked with Professor Veronika Rockova. I received my Ph.D. degree from Purdue University under the supervision of Dr. Xiao Wang, and I obtained my Master’s and Bachelor’s degrees from Seoul National University under the supervision of Dr. Hee-seok Oh.

Interests

  • Artificial Intelligence for Bayesian Statistics
  • Robust and Principled Deep Learning for Science
  • Statistical Uncertainty Quantification for Artificial Intelligence
  • Manifold Learning and Data Visualization
  • AI Data Synthesis
  • Nonparametric Bayes

Education

  • PhD in Statistics, 2022, Purdue University
  • MSc in Statistics, 2017, Seoul National University
  • BSc in Statistics, 2015, Seoul National University
  • BSc in Social Welfare, 2015, Seoul National University

NEWS

March 1 2026 JASA accepted our paper on the Tree Bandits for Generative Bayes (with Sean and Veronika)-!

May 21 2025 EJS accepted our paper on the mixing rate of Bayesian CART (with Veronika Rockova)-!

Jan 22 2025 AISTATS 2025 accepted our paper on the Generative Bayesian posterior sampler (with Percy and Veronika).

Dec 18 2024 TMLR accepted our paper on Inductive Global and Local Manifold Approximation and Projection (with Xiao Wang).

Oct 14 2024 (NEW PAPER) Check out our draft on the Generative Bayesian posterior sampler (with Percy and Veronika).

Aug 19 2024 (NEW PAPER) Check out our Uncertainty Quantification for Generative AI (with Sean and Veronika).

June 26 2024 (TALK) Invited to present at ISBA satellite 2024.

Apr 17 2024 (NEW PAPER) Check out our draft on the generative tree bandits (with Sean and Veronika).

Dec 17 2023 (TALK) Invited to present at CMStatistics 2023.

Dec 06 2023 (NEW PAPER) Check out our draft of deep learning for Bayesian inference (with Veronika Rockova).

Oct 04 2023 (TALK) Presented at the Statistics Department Colloquium at the University of Wisconsin–Madison.

Aug 10 2023 (TALK) Invited to present in a BART section at JSM 2023.

Jul 19 2023 (TALK) Invited to present at the International Statistical Institute (ISI) 2023 conference.

May 6 2023 (NEW PAPER) Check out our draft on the mixing rate of Bayesian CART (with Veronika Rockova).

Mar 31 2023 (TALK) Presented at the Statistics Department Colloquium at Auburn University.

RESEARCH

Sean O’Hagan, Jungeum Kim, and Veronika Rockova (2026), JASA

Jungeum Kim, Percy Zhai, and Veronika Rockova (2024), AISTATS

Jungeum Kim*, Sean O’Hagan*, and Veronika Rockova (2024)

Jungeum Kim and Veronika Rockova (2023)

Jungeum Kim and Veronika Rockova (2023), EJS

Jungeum Kim and Xiao Wang (2023), TMLR

Manifold learning for visualization purposes by constructing and preserving locally adaptive global distances. Our algorithm shows a clear progression from global formation (with random initialization) to local details in a single optimization process!(draft, code)

Jungeum Kim and Xiao Wang (2022), AOAS

The Bayes classifier in fact can be the most robust classifier. Therefore, adversarial training for robust classification with deep neural networks should still aim to learn the Bayes classifier-!

AWARDS

2021 Virgil Anderson and Gloria Fischer Graduate Fellowship, Purdue

contact

Jungeum.Kim@ncsu.edu

SAS Hall, 2311 Stinson Dr, Raleigh, NC 27607