In the EDA process, what does 'wrangling' refer to?
- Cleaning and transforming data
- Formulating hypothesis
- Interpreting data
- Visualizing data
Wrangling in the EDA process refers to the cleaning and transforming of data to facilitate subsequent analysis. This could involve addressing missing values, correcting inconsistencies, or reshaping the data structure.
Loading...
Related Quiz
- You are given a dataset with a significant amount of outliers. Which scaling method would be most suitable and why?
- What type of bias could be introduced by mean/median/mode imputation, particularly if the data is not missing at random?
- During an experiment, you discover that a certain variable is presenting a high number of outliers. What might this suggest about your data collection process?
- What is the general threshold value of VIF above which multicollinearity is generally assumed to be high?
- You notice that using the Z-score method for a particular data set is yielding too many outliers. What modifications can you make to the method to reduce the number of outliers detected?