Questions
Data Science Principles (202504-LLecture)
Single choice
Which step is essential in handling missing data?
Options
A.a. Ignoring the missing values
B.b. Removing the dataset entirely if any data is missing
C.c. Identifying the pattern and extent of missing data
D.d. Replacing all missing values with zero
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Step-by-Step Analysis
When considering how to handle incomplete data, it helps to map out what the missingness looks like before choosing a strategy.
Option a: Ignoring the missing values ignores potentially ......Login to view full explanationLog in for full answers
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