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Nonconcave Penalized Likelihood with a Diverging Number of Parameters
by
Peng, Heng
, Fan, Jianqing
in
62E20
/ 62F12
/ 62J02
/ asymptotic normality
/ Bayesian analysis
/ Distribution theory
/ diverging parameters
/ Estimators
/ Exact sciences and technology
/ General topics
/ likelihood ratio statistic
/ Mathematical independent variables
/ Mathematical models
/ Mathematics
/ Model Selection
/ Modeling
/ nonconcave penalized likelihood
/ Operations research
/ oracle property
/ Oracles
/ Parametric inference
/ Parametric models
/ Penalty function
/ Probability and statistics
/ Sample size
/ Sampling theory, sample surveys
/ Sciences and techniques of general use
/ Sex discrimination
/ Standard error
/ standard errors
/ Statistical analysis
/ Statistics
/ Threshing
2004
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Nonconcave Penalized Likelihood with a Diverging Number of Parameters
by
Peng, Heng
, Fan, Jianqing
in
62E20
/ 62F12
/ 62J02
/ asymptotic normality
/ Bayesian analysis
/ Distribution theory
/ diverging parameters
/ Estimators
/ Exact sciences and technology
/ General topics
/ likelihood ratio statistic
/ Mathematical independent variables
/ Mathematical models
/ Mathematics
/ Model Selection
/ Modeling
/ nonconcave penalized likelihood
/ Operations research
/ oracle property
/ Oracles
/ Parametric inference
/ Parametric models
/ Penalty function
/ Probability and statistics
/ Sample size
/ Sampling theory, sample surveys
/ Sciences and techniques of general use
/ Sex discrimination
/ Standard error
/ standard errors
/ Statistical analysis
/ Statistics
/ Threshing
2004
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Nonconcave Penalized Likelihood with a Diverging Number of Parameters
by
Peng, Heng
, Fan, Jianqing
in
62E20
/ 62F12
/ 62J02
/ asymptotic normality
/ Bayesian analysis
/ Distribution theory
/ diverging parameters
/ Estimators
/ Exact sciences and technology
/ General topics
/ likelihood ratio statistic
/ Mathematical independent variables
/ Mathematical models
/ Mathematics
/ Model Selection
/ Modeling
/ nonconcave penalized likelihood
/ Operations research
/ oracle property
/ Oracles
/ Parametric inference
/ Parametric models
/ Penalty function
/ Probability and statistics
/ Sample size
/ Sampling theory, sample surveys
/ Sciences and techniques of general use
/ Sex discrimination
/ Standard error
/ standard errors
/ Statistical analysis
/ Statistics
/ Threshing
2004
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Nonconcave Penalized Likelihood with a Diverging Number of Parameters
Journal Article
Nonconcave Penalized Likelihood with a Diverging Number of Parameters
2004
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Overview
A class of variable selection procedures for parametric models via non-concave penalized likelihood was proposed by Fan and Li to simultaneously estimate parameters and select important variables. They demonstrated that this class of procedures has an oracle property when the number of parameters is finite. However, in most model selection problems the number of parameters should be large and grow with the sample size. In this paper some asymptotic properties of the nonconcave penalized likelihood are established for situations in which the number of parameters tends to ∞ as the sample size increases. Under regularity conditions we have established an oracle property and the asymptotic normality of the penalized likelihood estimators. Furthermore, the consistency of the sandwich formula of the covariance matrix is demonstrated. Nonconcave penalized likelihood ratio statistics are discussed, and their asymptotic distributions under the null hypothesis are obtained by imposing some mild conditions on the penalty functions. The asymptotic results are augmented by a simulation study, and the newly developed methodology is illustrated by an analysis of a court case on the sexual discrimination of salary.
Publisher
Institute of Mathematical Statistics,The Institute of Mathematical Statistics
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