I've attended a few interviews for this very post and the few question that was asked in all of these interviews.
1. What are feature vectors?
A feature vector is an n-dimensional vector of numerical features that represent some object. In machine learning, feature vectors are used to represent numeric or symbolic characteristics, called features, of an object in a mathematical, easily analyzable way.
2. Steps in making decision tree
- take the entire data set as input
- analyze the split that maximizes the separation of classes
- Apply the split to the input data
- Re-apply steps 1 to 2 to the divided data.
- Stop when you meet some stopping criteria.
- This step is called pruning. Clean up the tree if you went too far doing splits.
Hope this helps!
If you wanna know more about the Data Science with Python, go for the training course today.
Thank you!!