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Bayesian predictive inference for multivariate simple regression model with matrix-T error
Azizur Rahman
Data Science and Engineering Research Unit
DaMRG - Data Mining Research Group
Machine Vision and Digital Health (MaViDH) Research Group
Cyber Security Research Group (CSRG)
Imaging and Sensing Research Group
Health Services Research Group
Computing, Mathematics and Engineering
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Keyphrases
Simple Regression Model
100%
Predictive Distribution
100%
Bayesian Predictive Inference
100%
Bayesian Methods
66%
Predictive Inference
66%
Response Matrix
66%
Scale Parameter
33%
Statistical Methods
33%
Regression Matrix
33%
Residual Sum of Squares
33%
Product Matrix
33%
Sum-product
33%
T-distribution
33%
Location-scale
33%
Square Matrix
33%
Shape Parameter
33%
Location Parameter
33%
Simple Linear Model
33%
Mathematics
Matrix
100%
Bayesian
100%
Simple Regression Model
100%
Predictive Inference
100%
Future Response
28%
Sum of Squares
14%
Residual Sum
14%
T-Distribution
14%
Linear Models
14%
Statistical Method
14%
Shape Parameter
14%
Scale Parameter
14%