How do you handle missing data or incomplete responses in the scoring process?

Sample interview questions: How do you handle missing data or incomplete responses in the scoring process?

Sample answer:

Handling missing data or incomplete responses in the scoring process is crucial to ensure the accuracy and reliability of psychometric assessments. Here are several methods commonly employed:

1. Listwise Deletion:

  • Excludes cases with missing data from the analysis, leading to a reduced sample size.
  • Appropriate when data are missing completely at random (MCAR).
  • Preserves the original relationships among observed variables but may bias estimates if the missing data pattern is non-random.

2. Pairwise Deletion:

  • Uses all available data for each variable, even if other variables have missing values.
  • Increases the sample size but may introduce bias if the missing data pattern is related to the observed variables.

3. Imputation Techniques:

  • Replaces missing values with plausible values based on statistical models or auxiliary information.
  • Mean imputation: Replaces missing values with the mean of the observed values.
  • Multiple imputation: Generates multiple plausible values for missing data and pools the results to reduce bias.
  • Model-based imputation: Uses statistical models, such as regression or multiple imputations, to estimate missing values.

4. Sensitivity Analysis:

Leave a Reply

Your email address will not be published. Required fields are marked *