Publications

*authors contributed equally.

#Uncertainty Quantification #Latent Variable Models #Dynamical Systems #Graph Learning #Sensors

2024

  1. Quantifying Representation Reliability in Self-Supervised Learning Models
    Young-Jin Park, Hao Wang, Shervin Ardeshir, and Navid Azizan
    In UAI 2024

2022

  1. Uncertainty-Aware Meta-Learning for Multimodal Task Distributions
    Cesar Almecija, Apoorva Sharma, Young-Jin Park, and Navid Azizan
    In NeurIPS Workshop 2022
  2. VQ-AR: Vector Quantized Autoregressive Probabilistic Time Series Forecasting
    Kashif Rasul, Young-Jin Park, Max Nihlén Ramström, and Kyung-Min Kim
    arXiv preprint 2022

2021

  1. A neural process approach for probabilistic reconstruction of no-data gaps in lunar digital elevation maps
    Young-Jin Park, and Han-Lim Choi
    Aerospace Science and Technology 2021 [IF: 5.107]
  2. Bayesian Nonparametric State-Space Model for System Identification with Distinguishable Multimodal Dynamics
    Young-Jin Park, Soon-Seo Park, and Han-Lim Choi
    Journal of Aerospace Information Systems 2021 [IF: 1.076]
  3. Online Gaussian Process State-Space Model: Learning and Planning for Partially Observable Dynamical Systems
    Soon-Seo Park, Young-Jin Park, Youngjae Min, and Han-Lim Choi
    International Journal of Control, Automation and Systems (accepted) [IF: 3.314]

2020

  1. A Worrying Analysis of Probabilistic Time-series Models for Sales Forecasting
    Seungjae Jung*, Kyung-Min Kim*, Hanock Kwak*, and Young-Jin Park*
    In NeurIPS Workshop 2020
    🏆 Best Poster Awards

2019

  1. InfoSSM: Interpretable Unsupervised Learning of Nonparametric State-Space Model for Multi-modal Dynamics
    Young-Jin Park, and Han-Lim Choi
    In AIAA Scitech 2019 Forum 2019
    🏆 Student Paper Competition Finalists
  2. A Bayesian Approach to Learning and Planning for Partially Observable Dynamical Systems
    Soon Seo Park, Young-Jin Park, and Han-Lim Choi
    In AIAA Scitech 2019 Forum 2019

2018

  1. Deep gaussian process-based bayesian inference for contaminant source localization
    Young-Jin Park, Piyush M Tagade, and Han-Lim Choi
    IEEE Access 2018 [IF: 4.098]
  2. Deep Matrix-variate Gaussian Processes
    Young-Jin Park, Piyush M Tagade, and Han-Lim Choi
    In UAI Workshop 2018
  3. High-resolution reconstruction for no data gaps in narrow angle camera digital terrain models using Gaussian process-latent variable model
    Young-Jin Park, SungHyun Moon, and Han-Lim Choi
    In Lunar and Planetary Science Conference 2018