Review of methods for data sets with missing values and practical applications Cover Image

Review of methods for data sets with missing values and practical applications
Review of methods for data sets with missing values and practical applications

Author(s): Adam Korczyński
Subject(s): Economy
Published by: Wydawnictwo Uniwersytetu Ekonomicznego we Wrocławiu
Keywords: missing data pattern; missing data mechanism; complete-case analysis; available-case analysis; single imputation; likelihood-based methods; multiple imputation; weighting methods

Summary/Abstract: The aim of this paper is to revise the traditional methods (complete-case analysis, available-case analysis, single imputation) and current methods (likelihood-based methods, multiple imputation, weighting methods) for handling the problem of missing data and to assess their usefulness in statistical research. The paper provides the terminology and the description of traditional and current methods and algorithms used in the analysis of incomplete data sets. The methods are assessed in terms of the statistical properties of their estimators. An example is provided for the multiple imputation method. The review indicates that current methods outweigh traditional ones in terms of bias reduction, precision and efficiency of the estimation.

  • Issue Year: 18/2014
  • Issue No: 12
  • Page Range: 83-104
  • Page Count: 21
Toggle Accessibility Mode