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Related Questions
- What are the different types of out-of-sample error and how do they impact model performance?
- Can you explain the concept of overfitting and how it relates to out-of-sample error?
- How does cross-validation help to estimate the out-of-sample error of a machine learning model?
- What are the benefits and limitations of k-fold cross-validation in estimating out-of-sample error?
- Can you provide an example of how cross-validation is used to evaluate the performance of a regression model?
- How does the choice of k in k-fold cross-validation affect the estimation of out-of-sample error?
- What is the difference between cross-validation and holdout method in estimating out-of-sample error?
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