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Estimation and testing in constrained covariance component models
Frank H. Shaw,
Charles J. Geyer
Statistics (Twin Cities)
Research output
:
Contribution to journal
›
Article
›
peer-review
30
Scopus citations
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Mathematics
Component Model
90%
Bootstrap
65%
Double Bootstrap
56%
Testing
49%
Cutting Plane Algorithm
49%
Likelihood Ratio Test Statistic
46%
Restricted Maximum Likelihood
46%
Parametric Bootstrap
45%
Test of Hypothesis
44%
Feasible region
43%
Variance Components
40%
Positive semidefinite
38%
Inconsistent
37%
Covariance matrix
31%
Maximum Likelihood
30%
Estimate
16%
Business & Economics
Bootstrap
100%
Testing
58%
Maximum Likelihood
47%
Parametric Bootstrap
35%
Cutting Planes
34%
Variance Components
32%
Likelihood Ratio Test
28%
Test Statistic
25%
Engineering & Materials Science
Maximum likelihood
66%
Testing
36%
Covariance matrix
35%
Statistics
26%
Agriculture & Biology
variance covariance matrix
48%
statistics
32%
testing
27%
Medicine & Life Sciences
Statistics
54%