Search Results for author: Minsuk Shin

Found 3 papers, 1 papers with code

Neural Bootstrapping Attention for Neural Processes

no code implementations29 Sep 2021 Minsub Lee, Junhyun Park, Sojin Jang, Chanhui Lee, Hyungjoo Cho, Minsuk Shin, Sungbin Lim

Recently, Bootstrapping (Attentive) Neural Processes (B(A)NP) propose a bootstrap method to capture the functional uncertainty which can replace the latent variable in (Attentive) Neural Processes ((A)NP), thus overcoming the limitations of Gaussian assumption on the latent variable.

Bayesian Optimization Decision Making

Neural Bootstrapper

2 code implementations NeurIPS 2021 Minsuk Shin, Hyungjoo Cho, Hyun-seok Min, Sungbin Lim

Bootstrapping has been a primary tool for ensemble and uncertainty quantification in machine learning and statistics.

Active Learning BIG-bench Machine Learning +3

Generative Parameter Sampler For Scalable Uncertainty Quantification

no code implementations28 May 2019 Minsuk Shin, Young Lee, Jun S. Liu

Uncertainty quantification has been a core of the statistical machine learning, but its computational bottleneck has been a serious challenge for both Bayesians and frequentists.

General Classification Uncertainty Quantification

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