Decision Trees and Ensemble Methods Questions
How decision trees recursively split data. Hyperparameters: max depth, min samples split, criterion. Ensemble methods: random forests, gradient boosting. Understanding why ensembles work (combining weak learners). Trade-offs: complexity, interpretability, bias-variance. When to use trees vs. linear models.
Unlock Full Question Bank
Get access to hundreds of Decision Trees and Ensemble Methods interview questions and detailed answers.
Sign in to ContinueJoin thousands of developers preparing for their dream job.