Students are underlined. * is the article what I am an corresponding author.
Publication
Jin, I.H. and Liang, F. (2013) Fitting social network models using varying truncation stochastic approximation MCMC algorithms.
Journal of Computational and Graphical Statistics. Vol. 22. No. 4: pp. 927-952.
Selected JCGS highlights at the Interface 2012: Future of Statistical Computing.
Liang, F. and Jin, I.H. (2013) A Monte Carlo Metropolis-Hasting algorithms for sampling from distributions with intractable normalizing constants.
Neural Computation, Vol. 25. No. 8: pp. 2199-2234.
Jin, I.H., Yuan, Y., and Liang, F. (2013) Bayesian analysis for exponential random graph models using the adaptive exchange sampler.
Statistics and Its Interface, Vol. 6: pp. 559-576.
Jin, I.H. and Liang, F. (2014) Use of SAMC for Bayesian analysis of statistical models with intractable normalizing constants.
Computational Statistics and Data Analysis. Vol. 71: pp. 402-416.
Jin, I.H., Liu, S., Thall, P. F., and Yuan, Y. (2014) Using data augmentation to facilitate conduct of phase I/II clinical trials with delayed outcomes.
Journal of the American Statistical Association. Vol. 109. No. 506: pp. 525-536.
Jin, I.H., Huo, L., Yin, G., and Yuan, Y. (2015) Phase I trial design for drug combinations with Bayesian model averaging.
Pharmaceutical Statistics, Vol. 14. No. 2: pp. 109-119.
Liang, F., Jin, I.H., Song, Q, and J.S. Liu. (2016) An adaptive exchange algorithm for sampling from distribution with intractable normalizing constants.
Journal of the American Statistical Association. Vol. 111. No. 513: pp. 377-393.
Jin, I.H., Yuan, Y., and Bandyopadhyay, D. (2016) A Bayesian hierarchical spatial model for dental caries assessments using non-gaussian Markov random fields.
The Annals of Applied Statistics. Vol. 10. No. 2: pp. 884-905.
Liu, H., Jin, I.H. and, Zhang, Z. (2018) Structural Equation Modeling of Social Networks: Specification, Estimation, and Applications.
Multivariate Behavioral Research, Vol. 53. No. 5: pp.714-730.
Awarded Tanaka Award: Most Outstanding Article in Multivariate Behavioral Research Volume 53.
Jin, I.H.* and Jeon, M. (2019) A doubly latent space joint model for local item and person dependence in item response analysis.
Psychometrika, Vol. 84. No. 1: pp. 236-260.
Nam, J. H., Yun, J., Jin, I.H.*, and Chung, D.* (2020) hubViz: A Novel Tool for Hub-centric Visualization.
Chemometrics and Intelligent Laboratory Systems. Vol. 203. 104071.
Yun, J., Shin, M., Jin, I.H.*, and Liang, F. (2020) Stochastic approximation Hamiltonian Monte Carlo.
Journal of Statistical Computation and Simulation. Vol. 90. No. 17: pp. 3135-3156.
Che, C., Jin, I.H., and Zhang, Z. (2021) Network Mediation Analysis Using Model-based Eigenvalue Decomposition.
Structural Equation Modeling: A Multidisciplinary Journal. Vol. 28. No. 1: pp. 148-161.
Liu, H., Jin, I.H., Zhang, Z, and Yuan, Y. (2021) Social Network Mediation Analysis: Latent Space Approach. Psychometrika. Vol. 86. No. 1: pp. 272-298.
Jeon, M., Jin, I.H., Schweinberger, M., and Baugh, S. (2021) Mapping unobserved item-respondent interactions : A latent space item response model with interaction map. Psychometrika. Vol. 86. No. 2: pp. 378-403.
Y. Zhang, S. Cao, C. Zhang, Jin, I.H., and Zang, Y. (2021) A Bayesian Adaptive Phase I/II Clinical Trial Design with Late-onset Competing Risk Outcomes. Biometrics. Vol. 77. Issue 3: pp. 796-808.
Park, J., Jin, I.H.*, and Schweinberger, M. (2022) Bayesian Model Selection for High-Dimensional Ising Models, with Applications to Educational Data.
Computational Statistics and Data Analysis. Vol. 125: Article 107325.
Park, J., Jeon, Y., Shin, M., Jeon, M., and Jin, I.H.* (2022) Bayesian Shrinkage for Functional Network Models, with Applications to Longitudinal Item
Response Data. Journal of Computational and Graphical Statistics. Vol. 31. No. 2: pp 360-377.
Liu, F., Eugenio, E., Jin, I.H., and Bowen, C. M. (2022) Differentially Private Synthesis of Social Network Structure via Exponential Random Graph Model.
Journal of Survey Statistics & Methodology. Vol. 10. No. 2: pp. 753-784
D. Go, M. Jeon, S. Lee, Jin, I.H.*, and Park. H*. (2022) Analyzing differences between parent- and self-report measures with a latent space approach.
Plos One. Vol. 17. No. 6. Article e0269376.
Jin, I.H., Jeon, M., Schweinberger, M, Yun, J., and Lin. L. (2022) Multilevel network item response modelling for discovering differences between innovation
and regular school systems in Korea. Journal of Royal Statistical Society, Series C. Vol 71. Issue 5: pp. 1225-1244.
Kim, H., Jeon, Y., Kim, H., Kim, D., Park, S., Jin, I.H., and Jung, S.J. (2022) Application of joint latent space item response model to clustering stressful life
events and Beck Depression Inventory II: Results from Korean epidemiological survey data. Epidemiology and Health. Vol. 44. Article e2022093.
D. Go, Im, J., and Jin, I.H. (2023) Quantile Regression with Multiple Proxy Variables. Stat. Vol 12. e546.
Park, J., Jin, I.H.*, and Jeon, M. (2023) How social network influences human behavior: An integrated latent space approach for differential social influence.
Psychometrika. Vol. 88. No. 4: pp. 1529-1555.
Jin, I.H.*, Yun, J., Kim, H., Jeon, M.. (2023) A Latent Space Accumulator Model for Response Time : Applications to Cognitive Assessment Data. Stat. Vol 12. e632.
Park, J., Hu, W., Jin, I.H.*, Liu, H. and Zang, Y. (2024) A Bayesian Adaptive Biomarker Stratified Phase II Randomized Clinical Trial Design for
Radiotherapies with Competing Risk Survival Outcomes. Statistical Methods in Medical Research. Vol. 33. Issue 1: pp. 80-95.
Jin, I.H., Liu, F., Park, J., Eugenio, E., and Liu, S. (2024) Bayesian Hierarchical Spatial Model for Small Area Estimation with Non-ignorable
Nonresponses and Its Applications to the NHANES Dental Caries Assessments. Accepted to Journal of Korean Statistical Society. ArXiv:1810.05297.
Jeon, Y., Park, J., Jin, I.H.*, and Chung, D. (2024) Network-based Topic Structure Visualization. Accepted to Journal of Applied Statistics. ArXiv:2106.07374.
Kim, J., Kang, S., Jin, I.H., and Park, J. (2024) Control of Frequentist Type I Error Rates in Hierarchical Linear Models for Multiregional Clinical Trials
Using a Bayesian Method. Accepted to Communication in Statistics - Simulation and Computation.
Kim, S., Cho, Y., Ki, H., Park, S., Oh, D., Lee, S., Cho, Y., Kim, J., Lee, W., Park, J., Jin, I.H., and Kang, S. (2024) Improved Mean Field Estimates of GEMS AOD
L3 Product: Using Spatio-temporal Variability. Accepted to Atmospheric Measurement Techniques.
Yi, S., Kim, M., Park, J., Jeon, M., and Jin, I.H.* (2024) Impacts of Innovation School System in Korea: A Latent Space Item Response Model
with Neyman-Scott Point Process. Accepted to Journal of the Royal Statistical Society, Series A. ArXiv:2306.02106.
Go, D., Kim, K., Park, J., Park, J., Jeon, M., and Jin, I.H.* (2022) LSIRM : An R Package for a Latent Space Item Response Model with an Interaction Map.
Revision Invited to R Journal. ArXiv:2205.06989
Submitted Manuscripts
Park, J., Jin, I.H., and Jeon, M. (2024) Analysis of Log Data from an International Online Educational Assessment System : A Multi-state Survival Modeling Approach to Reaction Time between and across Action Sequence. Revision Invited to Psychometrika.
Kim, G., Jin, I.H.*, and Jeon, M. (2025) Analyzing Classroom Interaction Data Using Prompt Engineering and Network Analysis. Revision Invited to Psychometrika. ArXiv:2501.18912
Lee, D., Kim, J., Park, J., Jin, I.H.*, and Ha, M. J. (2025) BDDN: Bayesian Dynamic Differential Network Analysis in Cancer Proteomics. Submitted to BMC Bioinformatics.
Refereed Conference Proceeding
Liu, F., Eugenio, E., Jin, I.H., Bowen, C. M. (2020) Differentially Private Generation of Social Networks via Exponential Random Graph Models,
Proceedings of 2020 IEEE 44th Annual Computers, Software, and Applications Conference (COMPSAC). pp. 1695-1700.
Unpublished Manuscript
Jin, I.H. and Liang, F. (2009) Bayesian analysis for exponential random graph models using the double Metropolis-Hastings sampler. Technical Report 2009- 097.
Institute for Applied Mathematics and Computer Science, Texas A&M University.
Brodersen, A., Jin, I.H., Cheng, Y., and Jeon, M. (2021) Applying the Network Item Response Model to Student Assessment Data. ArXiv:2003.07657.
You, K., Kim, I., Jeon, M., and Jin, I.H.* (2022) Multiple Latent Spaces Comparisons Using the Topological Analysis. ArXiv:2208.12435