Research

Graduate Achievements

LIM Lab’s (Prof. Sungbin Lim) paper accepted to NeurIPS 2021

Learning Intelligent Machine (LIM) lab’s paper is accepted to 35th Conference on Neural Information Processing Systems (NeurIPS) 2021, one of the top-3 conferences for artificial intelligence and machine learning.
Bootstrapping has been a primary tool for ensemble and uncertainty quantification in machine learning and statistics.
However, due to its nature of multiple training and resampling, bootstrapping deep neural networks is computationally burdensome; hence it has difficulties in practical application to uncertainty estimation and related tasks. To overcome this computational bottleneck, we propose a novel approach called NeuBoots (Neural Bootstrapper), which learns to generate bootstrapped neural networks through single model training.
Our empirical results show that NeuBoots outperforms other uncertainty quantification methods under a much lower computational cost without losing the validity of bootstrapping.
Neural Bootstrapper” by Minsuk Shin, Hyungjoo Cho, Hyun-seok Min, Sungbin Lim*
Note: *Corresponding Author