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BAMITA: Bayesian multiple imputation for tensor arrays
Ziren Jiang, Gen Li,
Eric F. Lock
Biostatistics
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peer-review
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Keyphrases
Multiple Imputation
100%
Microbiome
50%
Bayesian Framework
50%
Covariance Structure
50%
Point Estimate
50%
Microbial Profile
50%
Species Diversity
50%
Model Use
50%
Parallel Factor Analysis
50%
Missing Data Imputation
50%
Missing Entries
50%
Canonical Decomposition
50%
Uncertainty Calibration
50%
Conjugate Prior
50%
Multi-way Arrays
50%
Biomedical Domain
50%
Imputation Accuracy
50%
Residual Covariance
50%
Accuracy Calibration
50%
Imputation Approach
50%
Imputation Uncertainty
50%
Longitudinal Microbiome
50%
Mathematics
Residual Covariance Structure
16%