How to Prepare for IBM Certification Questions with Limited Time

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How to Prepare for IBM Certification Questions with Limited Time

2. IBM Data Science Certification: Sample Question and Solution

Question: In an IBM Data Science project, you are given a dataset with missing values in multiple columns. How would you handle these missing values to ensure the accuracy of your model?

Solution: Handling missing values is a critical step in preparing data for machine learning models. Here are some common methods to address missing data:

  • Remove Rows with Missing Values: If the dataset is large and the 

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    number of rows with missing values is small, you can remove those rows without significantly affecting the model's performance.
  • Impute Missing Values: If removing rows isn't feasible, you can impute missing values using statistical techniques such as:
    • Mean/Median Imputation: Replace missing values with the mean or median of the column.
    • Mode Imputation: For categorical data, replace missing values with the mode (most frequent value).
    • Advanced Imputation Methods: Use more advanced techniques such as K-Nearest Neighbors (KNN) imputation or regression imputation to fill in missing values based on the relationship between other variables.

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