0000000000490548

AUTHOR

Mehdi Dagdoug

showing 2 related works from this author

Model-Assisted Estimation Through Random Forests in Finite Population Sampling

2021

In surveys, the interest lies in estimating finite population parameters such as population totals and means. In most surveys, some auxiliary information is available at the estimation stage. This information may be incorporated in the estimation procedures to increase their precision. In this article, we use random forests (RFs) to estimate the functional relationship between the survey variable and the auxiliary variables. In recent years, RFs have become attractive as National Statistical Offices have now access to a variety of data sources, potentially exhibiting a large number of observations on a large number of variables. We establish the theoretical properties of model-assisted proc…

Statistics and ProbabilityEstimationFOS: Computer and information sciences0303 health scienceseducation.field_of_studyPopulationAstrophysics::Cosmology and Extragalactic Astrophysics01 natural sciencesPopulation samplingNonparametric regressionRandom forestMethodology (stat.ME)010104 statistics & probability03 medical and health sciencesVariance estimationStatisticsQuantitative Biology::Populations and EvolutionSurvey data collectionStage (hydrology)0101 mathematicsStatistics Probability and UncertaintyeducationStatistics - Methodology030304 developmental biologyMathematics
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Imputation Procedures in Surveys Using Nonparametric and Machine Learning Methods: An Empirical Comparison

2020

Abstract Nonparametric and machine learning methods are flexible methods for obtaining accurate predictions. Nowadays, data sets with a large number of predictors and complex structures are fairly common. In the presence of item nonresponse, nonparametric and machine learning procedures may thus provide a useful alternative to traditional imputation procedures for deriving a set of imputed values used next for the estimation of study parameters defined as solution of population estimating equation. In this paper, we conduct an extensive empirical investigation that compares a number of imputation procedures in terms of bias and efficiency in a wide variety of settings, including high-dimens…

FOS: Computer and information sciencesStatistics and ProbabilityStatistics::ApplicationsEmpirical comparisonbusiness.industryComputer scienceApplied MathematicsNonparametric statisticsMachine learningcomputer.software_genreStatistics - ComputationVariety (cybernetics)Methodology (stat.ME)Set (abstract data type)Statistics::MethodologyImputation (statistics)Artificial intelligenceStatistics Probability and UncertaintybusinesscomputerStatistics - MethodologyComputation (stat.CO)Social Sciences (miscellaneous)Journal of Survey Statistics and Methodology
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