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Testing for covariate effects in the fully nonparametric analysis of covariance model
Lan Wang, Michael G. Akritas
Statistics (Twin Cities)
Research output
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Contribution to journal
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Article
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peer-review
10
Scopus citations
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Dive into the research topics of 'Testing for covariate effects in the fully nonparametric analysis of covariance model'. Together they form a unique fingerprint.
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Business & Economics
Nonparametric Analysis
100%
Analysis of Covariance
97%
Covariates
73%
Testing
60%
Test Statistic
46%
Local Alternatives
20%
Factors
19%
Asymptotic Theory
19%
Normal Distribution
15%
Hypothesis Testing
14%
Interaction Effects
14%
Inference
11%
Mathematics
Analysis of Covariance
95%
Covariates
61%
Testing
51%
Test Statistic
37%
Model
23%
Interaction Effects
19%
Local Alternatives
18%
F Test
17%
Testing Hypotheses
17%
Main Effect
17%
Analysis of variance
15%
Asymptotic Theory
15%
Limiting Distribution
14%
Null hypothesis
13%
Quadratic form
13%
Gaussian distribution
12%
Context
8%
Demonstrate
8%
Form
5%
Class
4%