MissBGM jointly models data generation and missingness in a Bayesian neural generative framework to produce consistent imputations with principled posterior uncertainty.
Vaes in the presence of missing data
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Missingness-aware Data Imputation via AI-powered Bayesian Generative Modeling
MissBGM jointly models data generation and missingness in a Bayesian neural generative framework to produce consistent imputations with principled posterior uncertainty.