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An asymptotic property of model selection criteria
Yuhong Yang, Andrew R. Barron
Statistics (Twin Cities)
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Article
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peer-review
75
Scopus citations
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Keyphrases
Model Selection
100%
Model Selection Criteria
100%
Convergence Rate
100%
Resolvability
100%
Descriptional Complexity
100%
Neural Network Model
100%
Model Dimension
100%
Sobolev Spaces
100%
Probability Model
100%
Optimal Convergence Rate
100%
Penalty Term
100%
Asymptotic Properties
100%
Complexity Penalty
100%
Smoothness Parameter
100%
Three-term
100%
Log-density
100%
Density Estimator
100%
Approximation Accuracy
100%
Minimax Optimal
100%
Nonparametric Density Estimation
100%
Sparse Density
100%
Asymptotic Risk
100%
Density Function Estimation
100%
Penalized Log-likelihood
100%
Rate-based Model
100%
Mathematics
Asymptotics
100%
Model Selection Criterion
100%
Sobolev Space
100%
Minimax
100%
Model Selection
100%
Asymptotic Property
100%
Probability Model
100%
Log Likelihood
100%
Density Function
100%
Convergence Rate
100%
Network Model
100%
Neural Network
100%
Descriptive Complexity
100%
Nonparametric Density Estimation
100%
Rate of Convergence
100%