- REVIEW: ML Models Pros and Cons
- REVIEW: Model Training Terminology
- 1. What is the Independence Assumption for a Naive Bayes Classifier?
- 2. Explain the Linear Regression Model and Discuss Its Assumption?
- 3. Explain Briefly the K-Means Clustering and How Can We Find the Best Value of K?
- 4. Explain What is Information Gain and Entropy in the Context of Decision Trees?
- 5. Mention Three Ways to Handle Missing or Corrupted Data in a dataset?
- 6. Strategies for Mitigating the Impact of Outliers in Model Training
- 7. Explain Briefly the Logistic Regression Model and State an Example of When You Have Used It Recently?
- 8. Describe Briefly the Hypothesis Testing and P-value in Layman’s Terms? and Give a Practical Application for Them?
- 9. What is an Activation Function and Discuss the Use of an Activation Function? Explain Three Different Types of Activation Functions?
- REVIEW: Dimensionality Reduction Techniques
- 10. What Do You Do When You Have a Low Amount of Data and Large Amount of Features?
- REVIEW: Define Correlation
- 11. What is a Correlation Coefficient?
- 12. Explain Pearson’s Correlation Coefficient.
- 13. Explain Spearman’s Correlation Coefficient.
- 14. Compare Pearson and Spearman Coefficients.
- REVIEW: Multicollinearity
- 16. What are L1 and L2 Regularization? What are the Differences Between the Two?