no code implementations • 25 Feb 2025 • Shinwoo Park, Hyundong Jin, Jeong-Won Cha, Yo-Sub Han
Based on these findings, we develop LPcodedec, a detection method that identifies paraphrase relationships between human-written and LLM-generated code, and discover which LLM is used for the paraphrasing.
no code implementations • 20 Feb 2024 • Jinsung Jeon, Hyundong Jin, Jonghyun Choi, Sanghyun Hong, Dongeun Lee, Kookjin Lee, Noseong Park
Extensively evaluating methods with seven image recognition benchmarks, we show that the proposed PAC-FNO improves the performance of existing baseline models on images with various resolutions by up to 77. 1% and various types of natural variations in the images at inference.
no code implementations • 16 Dec 2023 • Woojin Cho, Seunghyeon Cho, Hyundong Jin, Jinsung Jeon, Kookjin Lee, Sanghyun Hong, Dongeun Lee, Jonghyun Choi, Noseong Park
Neural ordinary differential equations (NODEs), one of the most influential works of the differential equation-based deep learning, are to continuously generalize residual networks and opened a new field.
1 code implementation • ICCV 2023 • Hyundong Jin, Gyeong-hyeon Kim, Chanho Ahn, Eunwoo Kim
The base network learns knowledge of sequential tasks, and the sparsity-inducing hypernetwork generates parameters for each time step for evolving old knowledge.
1 code implementation • Conference 2022 • Hyundong Jin, Eunwoo Kim
In this work, we propose a novel approach to differentiate helpful and harmful information for old tasks using a model search to learn a current task effectively.
Ranked #1 on
Continual Learning
on Split MNIST (5 tasks)