Skip to main content

Breadcrumb

Home arrow_forward_ios Resource Library Search arrow_forward_ios A Study of Imputation Algorithms
Home arrow_forward_ios ... arrow_forward_ios A Study of Imputation Algorithms
Resource Library Search
Report Working paper

A Study of Imputation Algorithms

NCES
Author(s):
Ming-xiu Hu and Sameena Salvucci
Publication date:
November 2001
Survey areas:
SSDCS - Statistical Standards and Data Confidentiality Staff
Publication number:
NCES 200117

Summary

In this report, the authors review about 30 imputation methods and five imputation software packages, and then evaluate 11 of the most popular imputation methods through a Monte Carlo simulation study. There are also chaphters on nonresponse bias correction via imputation and on variance estimation with imputed data and multiple imputation inference.

Online Availability

  • Download, view and print the report as a pdf file.

Share

Icon to link to Facebook social media siteIcon to link to X social media siteIcon to link to LinkedIn social media siteIcon to copy link value

Tags

Data and Assessments

You may also like

Zoomed in IES logo
Workshop/Training

Data Science Methods for Digital Learning Platform...

August 18, 2025
Read More
Zoomed in IES logo
Workshop/Training

Meta-Analysis Training Institute (MATI)

July 28, 2025
Read More
Zoomed in Yellow IES Logo
Workshop/Training

Bayesian Longitudinal Data Modeling in Education S...

July 21, 2025
Read More
icon-dot-govicon-https icon-quote