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Nonparametric Regression With Predictors Missing at Random
by
Efromovich, Sam
in
Analytical estimating
/ Applications
/ Biased data
/ Complete case
/ Conditional probabilities
/ Confidence bands
/ Credit scores
/ Data analysis
/ Density estimation
/ Estimating techniques
/ Estimation
/ Estimation methods
/ Estimators
/ Exact sciences and technology
/ Feasibility
/ General topics
/ Linear regression
/ Mathematics
/ Minimax
/ MISE
/ Missing data
/ Nonparametric inference
/ Nuisance functions
/ Oracles
/ Parametric inference
/ Probability
/ Probability and statistics
/ Random sampling
/ Ratios
/ Regression analysis
/ Sciences and techniques of general use
/ Statistical analysis
/ Statistics
/ Theory and Methods
/ Variables
2011
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Nonparametric Regression With Predictors Missing at Random
by
Efromovich, Sam
in
Analytical estimating
/ Applications
/ Biased data
/ Complete case
/ Conditional probabilities
/ Confidence bands
/ Credit scores
/ Data analysis
/ Density estimation
/ Estimating techniques
/ Estimation
/ Estimation methods
/ Estimators
/ Exact sciences and technology
/ Feasibility
/ General topics
/ Linear regression
/ Mathematics
/ Minimax
/ MISE
/ Missing data
/ Nonparametric inference
/ Nuisance functions
/ Oracles
/ Parametric inference
/ Probability
/ Probability and statistics
/ Random sampling
/ Ratios
/ Regression analysis
/ Sciences and techniques of general use
/ Statistical analysis
/ Statistics
/ Theory and Methods
/ Variables
2011
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Nonparametric Regression With Predictors Missing at Random
by
Efromovich, Sam
in
Analytical estimating
/ Applications
/ Biased data
/ Complete case
/ Conditional probabilities
/ Confidence bands
/ Credit scores
/ Data analysis
/ Density estimation
/ Estimating techniques
/ Estimation
/ Estimation methods
/ Estimators
/ Exact sciences and technology
/ Feasibility
/ General topics
/ Linear regression
/ Mathematics
/ Minimax
/ MISE
/ Missing data
/ Nonparametric inference
/ Nuisance functions
/ Oracles
/ Parametric inference
/ Probability
/ Probability and statistics
/ Random sampling
/ Ratios
/ Regression analysis
/ Sciences and techniques of general use
/ Statistical analysis
/ Statistics
/ Theory and Methods
/ Variables
2011
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Nonparametric Regression With Predictors Missing at Random
Journal Article
Nonparametric Regression With Predictors Missing at Random
2011
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Overview
Nonparametric regression with predictors missing at random (MAR), where the probability of missing depends only on observed variables, is considered. Univariate predictor is the primary case of interest. A new adaptive orthogonal series estimator is developed. Large sample theory shows that the estimator is rate-minimax and it is also sharp-minimax whenever predictors are missing completely at random (MCAR). Furthermore, confidence bands, estimation of nuisance functions, including conditional probability of observing the predictor, design density and scale, and multiple regression are also considered. Numerical study and a real example show feasibility of the proposed methodology for small samples. Supplementary materials, containing results of the numerical study, are available online.
Publisher
Taylor & Francis,American Statistical Association,Taylor & Francis Ltd
Subject
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