Dealing With Missing Data

Description

This course will cover the steps used in weighting sample surveys, including methods for adjusting for nonresponse and using data external to the survey for calibration. Among the techniques discussed are adjustments using estimated response propensities, poststratification, raking, and general regression estimation. Alternative techniques for imputing values for missing items will be discussed. For both weighting and imputation, the capabilities of different statistical software packages will be covered, including R®, Stata®, and SAS®.



Have you tried this resource? Help someone out by sharing your thoughts!

Write a review

More Ways to Learn Data Collection and Analysis

Introduction to Systematic Review and Meta-Analysis
Johns Hopkins University
Introduction to Systematic Review and Meta-Analysis
College | Free
Regression Modeling in Practice
Wesleyan University
Regression Modeling in Practice
College | Free
Managing Data Analysis
Johns Hopkins University
Managing Data Analysis
College | Free
Capstone: Create Value from Open Data
ESSEC Business School
Capstone: Create Value from Open Data
College | Free