How do you deal with missing data and attrition in longitudinal studies?

Powered by AI and the LinkedIn community

Longitudinal studies are a powerful way to examine how variables change over time and how they affect each other. However, they also pose some challenges when it comes to handling missing data and attrition, which can bias the results and reduce the validity of the analysis. In this article, you will learn some strategies to deal with these issues and improve your statistical modeling skills.

Rate this article

We created this article with the help of AI. What do you think of it?
Report this article

More relevant reading