15,528 research outputs found

    Finite sample properties of multiple imputation estimators

    Full text link
    Finite sample properties of multiple imputation estimators under the linear regression model are studied. The exact bias of the multiple imputation variance estimator is presented. A method of reducing the bias is presented and simulation is used to make comparisons. We also show that the suggested method can be used for a general class of linear estimators

    Valence characteristics and entry of a third party

    Get PDF
    This paper offers an explanation for the discrepancy between Downs' prediction of convergence to the median and the real world observations of nonconvergence. We modify Palfrey (1984) by introducing valence characteristics and show that there exist equilibria with entry in which the entrant may choose to be an extremist.Downsian model

    Integration of survey data and big observational data for finite population inference using mass imputation

    Get PDF
    Multiple data sources are becoming increasingly available for statistical analyses in the era of big data. As an important example in finite-population inference, we consider an imputation approach to combining a probability sample with big observational data. Unlike the usual imputation for missing data analysis, we create imputed values for the whole elements in the probability sample. Such mass imputation is attractive in the context of survey data integration (Kim and Rao, 2012). We extend mass imputation as a tool for data integration of survey data and big non-survey data. The mass imputation methods and their statistical properties are presented. The matching estimator of Rivers (2007) is also covered as a special case. Variance estimation with mass-imputed data is discussed. The simulation results demonstrate the proposed estimators outperform existing competitors in terms of robustness and efficiency

    Predictive mean matching imputation in survey sampling

    Get PDF
    Predictive mean matching imputation is popular for handling item nonresponse in survey sampling. In this article, we study the asymptotic properties of the predictive mean matching estimator of the population mean. For variance estimation, the conventional bootstrap inference for matching estimators with fixed matches has been shown to be invalid due to the nonsmoothness nature of the matching estimator. We propose asymptotically valid replication variance estimation. The key strategy is to construct replicates of the estimator directly based on linear terms, instead of individual records of variables. Extension to nearest neighbor imputation is also discussed. A simulation study confirms that the new procedure provides valid variance estimation.Comment: 20 pages, 0 figure, 1 tabl
    • …
    corecore