Previously, I worked at Hyperconnect as a Machine Learning Engineer and Backend Engineer.
At Hyperconnect, I developed ML models that enhance Azar and Hakuna's user experience, million download apps.
There, I experienced existing limitations of the current state of machine learning algorithms, therefore, I decided to contribute to breaking those walls.
I believe that artificial intelligence will enable more people to take advantage of the benefits that are now only available to a few, just as the World Wide Web has changed the world.
For this, I'm focusing on the challenges we have in using AI more responsibly and safely.
I'm interested in the theory-inspired algorithms for handling long-tail, unseen (adversarial or out-of-distribution) data possibly under resource constraints.
I'm also working on causal analysis of machine learning algorithms.
(*: equal contribution)
Self-Diagnosing GAN: Diagnosing Underrepresented Samples in Generative Adversarial Networks
Jinhee Lee*, Haeri Kim*, Youngkyu Hong*, Hye Won Chung
In submission arXiv
Detect underrepresented samples in GAN training via learning dynamics analysis and emphasize them.
Disentangling Label Distribution for Long-tailed Visual Recognition Youngkyu Hong*,
Seungju Han*, Kwanghee Choi*, Seokjun Seo, Beomsu Kim, Buru Chang
CVPR, 2021
arXiv
Disentangling label distribution during the training phase helps inference on the label distribution shifted dataset.
Honors and Awards
KFAS Undergraduate Scholarship (2018-2021)
Dean’s List (Spring 2016, Spring 2017, Fall 2017, and Spring 2018)