Machine Learning Engineer Question:

Tell us an example where ensemble techniques might be useful?

Tweet Share WhatsApp

Answer:

Ensemble techniques use a combination of learning algorithms to optimize better predictive performance. They typically reduce overfitting in models and make the model more robust (unlikely to be influenced by small changes in the training data).

You could list some examples of ensemble methods, from bagging to boosting to a “bucket of models” method and demonstrate how they could increase predictive power.

Download Machine Learning Engineer PDF Read All 65 Machine Learning Engineer Questions
Previous QuestionNext Question
Tell me what is precision and recall?Tell us how can we use your machine learning skills to generate revenue?