A missing indicator is a binary variable that specifies whether a value was missing for an observation (1) or not (0). It is common practice to replace missing observations by the mean, median, or mode while flagging those missing observations with a missing indicator, thus covering two angles: if the data was missing at random, this would be contemplated by the mean, median, or mode imputation, and if it wasn't, this would be captured by the missing indicator. In this recipe, we will learn how to add missing indicators using NumPy, scikit-learn, and Feature-engine.
Adding a missing value indicator variable
Getting ready
For an example of the implementation of missing indicators, along with mean imputation...