Examtopics

Professional Machine Learning Engineer
  • Topic 1 Question 76

    You are working on a classification problem with time series data. After conducting just a few experiments using random cross-validation, you achieved an Area Under the Receiver Operating Characteristic Curve (AUC ROC) value of 99% on the training data. You haven’t explored using any sophisticated algorithms or spent any time on hyperparameter tuning. What should your next step be to identify and fix the problem?

    • Address the model overfitting by using a less complex algorithm and use k-fold cross-validation.

    • Address data leakage by applying nested cross-validation during model training.

    • Address data leakage by removing features highly correlated with the target value.

    • Address the model overfitting by tuning the hyperparameters to reduce the AUC ROC value.


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