Consider we have a set of data with 3 classes, and we have observed 20 examples of which the greatest number 15 is in class c. If we predict that all future examples will be in class c, what is the expected error rate using minimum error pruning?

🎲 Try a Random Question  |  Total Questions in Quiz: 90  |  🧠 Study this quiz with Flashcards
This question is part of a full practice quiz:
Machine Learning 101 Practice Test: Decision Trees — practice the complete quiz, review flashcards, or try a random question.

Quiz on important decision trees concepts including decision tree pruning, inductive bias, classification trees, regression trees, and the powerful Random Forest algorithm.   Decision trees are a type of machine learning algorithm that split a dataset based on specific parameters until a final decision is made. They are one of the most easily explainable types of machine learning models.  Here are some basics about decision trees: Pruning: A technique that simplifies decision trees by reducing the rules. This helps to avoid complexity and improves accuracy. Splitting: Decision trees... Show more

Consider we have a set of data with 3 classes, and we have observed 20 examples of which the greatest number 15 is in class c. If we predict that all future examples will be in class c, what is the expected error rate using minimum error pruning?