Article
Variable Selection in Measurement Error Models.
Department of Statistics, Texas A&M University, College Station, TX 77843.
Bernoulli (impact factor:
1.05).
01/2010;
16(1):274-300.
pp.274-300
Source: PubMed
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Keywords
certain regularity conditions
chosen regularization parameter
errors-in-variable data
estimating equations
familiar data
finite sample performance
general functional measurement error models
general parametric measurement error models
general semiparametric measurement error models
Measurement error data
measurement error model context
measurement error models
Monte Carlo simulation studies
Natural criterion functions
oracle procedure
proposed methodology
proposed procedure
proposed procedures
selection procedures
variable selection