JSM 2021 Online Program
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Wed, 8/11/2021, 1:30 PM - 3:20 PM
Virtual
Advanced Bayesian Topics (Part 3) — Contributed Speed
Section on Bayesian Statistical Science
Chair(s): Yuexi Wang, University of Chicago
1:35 PM
Bayesian Nonparametric Quantile Regression with Multiple Proxy Variables
Dongyoung Go, Yonsei university
; Jongho Im, Yonsei university; Ickhoon Jin, Yonsei university
1:40 PM
A Novel Finite Mixture Model to Cluster Dynamic Latent Ability in Item Response Theory Models
1:45 PM
Bayesian Functional Partial Membership Model
1:50 PM
A Simulation-Based Comparison of Bayesian Computing Platforms in R
1:55 PM
An Empirical Bayes Approach to Estimating Dynamic Models of Co-Regulated Gene Expression
2:00 PM
Geographic and Racial Disparities in the Incidence of Low Birthweight in Pennsylvania
2:05 PM
Normalized Power Prior Bayesian Analysis
2:10 PM
Bayesian Analysis of Sparse Multivariate Matched Proportions
2:15 PM
Spatial Meshing for General Bayesian Multivariate Models
2:20 PM
Exchangeable Bayesian Matrix-Variate Hierarchical Clustering with Parallel Computation
2:30 PM
Bayesian Estimation of Constrained Mean-Covariance of Normal Distribution
2:35 PM
WITHDRAWN: Causal BART Mixture Model for Estimating Heterogeneous Treatment Effects
2:40 PM
Bayesian Finite Mixture Regression Models with Cluster-Specific Variable Selection
2:45 PM
Bayesian Latent Class Model for Predicting Gestational Age in Health Administrative Data
2:50 PM
Using Subject-Level Covariate Information in Bayesian Mixture Models for Basket Trials
2:55 PM
Sparse Bayesian High-Dimensional Vector Autoregressions
3:00 PM
Semiparametric Bayesian Regression Analysis of Multi-Typed Matrix-Variate Responses
3:05 PM
A Modified Cauchy-Net for Anomaly Detection
3:10 PM
State-Level Estimation by Combining Information from Two Health Surveys
3:15 PM
WITHDRAWN An Interpretable and Identifiable Approach to Age Period Cohort Modeling
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