Why is it important to deal with outliers before conducting data analysis?
- To clean the data
- To ensure accurate results
- To normalize the data
- To remove irrelevant variables
Dealing with outliers is important before conducting data analysis to ensure accurate results, as outliers can distort the data distribution and statistical parameters.
Loading...
Related Quiz
- Incorrect handling of missing data can lead to a(n) ________ in model performance.
- The degree of tailedness in a distribution is measured by _________.
- Suppose your machine learning model shows a significant shift in performance when transitioning from the training set to the test set. How could mishandling missing data contribute to this issue?
- The method of transforming data to handle outliers often involves applying a ________ to the data.
- The choice of graph for data visualization largely depends on the __________ of the dataset.