Weight Adjustments for Fractional Regression Hot Deck Imputation

نویسندگان

  • Minhui Paik
  • Michael D. Larsen
چکیده

Fractional regression hot deck imputation (FRHDI), suggested by J. K. Kim, imputes multiple values for each instance of a missing dependent variable. The imputed values are equal to the predicted value based on the fully observed cases plus multiple random residuals chosen from the set of empirical residuals. Fractional weights are chosen to enable variance estimation and to preserve the correlation among independent and dependent variables. The FRHDI method can be viewed as a special case of fractional hot deck imputation (FHDI). In some circumstances with some starting weight values, existing procedures for computing FRHDI weights can produce negative values. We discuss procedures for constructing nonnegative adjusted fractional weights for FRHDI.

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تاریخ انتشار 2007