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Methodologies, tools and techniques in small area estimation: an overview
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
University of Canberra
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Mathematics
Unit Level
100%
Linear Unbiased Prediction
100%
Ratio Estimate
100%
Statistics
100%
Empirical Bayes Procedure
100%
Statistical Model
100%
Sample Data
100%
Auxiliary Variable
100%
Level Model
100%
Keyphrases
Small Area Estimation
100%
Small Area
50%
Reweighting Technique
50%
Statistical Tools
25%
Statistical Techniques
25%
Area-level
25%
Appropriate Model
25%
Statistical Model
25%
Direct Estimation
25%
Combinatorial Optimization
25%
Spatial Microsimulation
25%
Small Area Statistics
25%
Best Linear Unbiased Prediction
25%
Multiple Characteristics
25%
Neighbouring Area
25%
Auxiliary Variable
25%
Statistical Precision
25%
All-small
25%
Borrowing Strength
25%
Hierarchical Bayes
25%
Empirical Bayes
25%
Indirect Estimates
25%
Microsimulation Approach
25%
Ratio Estimate
25%
Simple Ratio
25%
Increased Demand
25%
Unit Level Models
25%
Computer Science
Microsimulation
100%
Combinatorial Optimisation
50%
Auxiliary Variable
50%
Statistical Model
50%
Chemical Engineering
Auxiliaries
100%
Engineering
Statistical Model
100%