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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
Research output
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peer-review
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Dive into the research topics of 'Bayesian predictive inference for multivariate simple regression model with matrix-T error'. Together they form a unique fingerprint.
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Keyphrases
Bayesian Methods
66%
Bayesian Predictive Inference
100%
Location Parameter
33%
Location-scale
33%
Predictive Distribution
100%
Predictive Inference
66%
Product Matrix
33%
Regression Matrix
33%
Residual Sum of Squares
33%
Response Matrix
66%
Scale Parameter
33%
Shape Parameter
33%
Simple Linear Model
33%
Simple Regression Model
100%
Square Matrix
33%
Statistical Methods
33%
Sum-product
33%
T-distribution
33%
Mathematics
Bayesian
100%
Future Response
28%
Linear Models
14%
Matrix
100%
Predictive Inference
100%
Residual Sum
14%
Scale Parameter
14%
Shape Parameter
14%
Simple Regression Model
100%
Statistical Method
14%
Sum of Squares
14%
T-Distribution
14%