Publications

Publications

In Preparation

2026
  • A Domain-Informed Composite Kernel Gaussian Process Classifier for Molecular Toxicity Prediction with Principled Uncertainty Quantification

    Junhee Kim, Seongil Jo, Joonyeon Koo, Jaeoh Kim and Keunhong Jeong

  • Gaussian Process-Based Bayesian Optimization for One-Class Classification

    Inyoung Beak, Junhee Kim, Yeongmin Lee, Jaeoh Kim and Seongil Jo

Published

2025
  • A Bayesian Deep Kernel Regression Approach to Nonstationary Sensor Data Analysis

    Gyumin Choi and Seongil Jo*

    Journal of the Korean Data & Information Science Society, 36(6), 957-972

  • Predicting flatfish growth in Aquaculture using Bayesian deep kernel machines

    Junhee Kim, Seung-Won Seo, Ho-Jin Jung, Hyunseok Jang, Han-Kyu Lim, and Seongil Jo*

    Applied Sciences, 12(17), 9487

  • Identification of functional dynamic brain states based on graph attention networks

    Inyoung Baek, Jongyoung Namgung, Yeongjun Park, Seongil Jo*, and Bo-young Park*

    Neuroimage, 311(1), 121185

  • A weighted Bayesian kernel machine regression approach for predicting the growth of indoor-cultured abalone

    Seung-Won Seo, Gyumin Choi, Ho-Jin Jung, Mi-Jin Choi, Young-Dae Oh, Hyun-Seok Jang, Han-Kyu Lim*, and Seongil Jo*

    Applied Sciences, 15(708), 1-16

2024
  • A study on Bayesian beta regressions for modelling rates and proportions

    Jeongin Lee, Jaeoh Kim, and Seongil Jo*

    The Korean Journal of Applied Statistics, 37(3), 339-353