How do you deal with missing or noisy data when plotting interaction effects?
Interaction effects are when the effect of one variable on an outcome depends on the value of another variable. For example, the effect of exercise on weight loss may depend on the diet. Plotting interaction effects can help you visualize and understand how different factors interact in your experimental design. However, missing or noisy data can make your plots less accurate or misleading. In this article, you will learn how to deal with missing or noisy data when creating plots with interaction effects.