You hear a lot about machine learning these days. But how does it actually work?
Take the quiz—just 10 questions—to see how much you know about machine learning!
Question 1/10
What type of machine learning algorithm makes predictions when you have a set of input data and you know the possible responses?
Question 2/10
What category of machine learning algorithm finds patterns in the data when the data is not labeled?
Question 5/10
Which one of these classification algorithms is easiest to start with for prediction?
Question 7/10
Which feature selection technique uses shrinkage estimators to remove redundant features from data?
Question 10/10
What kind of table compares classifications predicted by the model with the actual class labels?
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Answer Key
- What type of machine learning algorithm makes predictions when you have a set of input data and you know the possible responses? Supervised learning
- What category of machine learning algorithm finds patterns in the data when the data is not labeled? Unsupervised learning
- When would you reduce dimensions in your data? When you have a large set of features with similar characteristics
- What does a classification model do? Assigns data to a predefined category
- Which one of these classification algorithms is easiest to start with for prediction? Logistic regression
- What does hyperparameter tuning do? Optimizes parameters to improve performance of a learning algorithm
- Which feature selection technique uses shrinkage estimators to remove redundant features from data? Regularization
- What is principal component analysis? A linear feature transformation technique for reducing data dimensionality
- What is overfitting? When the model learns specifics of the training data that can’t be generalized to a larger data set
- What kind of table compares classifications predicted by the model with the actual class labels? Confusion matrix
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