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?
You scored:
%
Great job!
You’re just starting to become a machine learning pro. Learn machine learning techniques with the interactive ebook, Machine Learning with MATLAB.
Impressive!
You know your stuff! Now master the techniques with the ebook, Mastering Machine Learning: A Step-by-Step Guide with MATLAB.
Impressive!
You know your stuff! Sign up for Machine Learning Onramp to learn more.
You’re a pro!
Start applying these machine learning skills with a free interactive tutorial on machine learning with MATLAB.
You’re a pro!
Start applying these machine learning skills with Machine Learning Onramp.
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
Seleziona un sito web
Seleziona un sito web per visualizzare contenuto tradotto dove disponibile e vedere eventi e offerte locali. In base alla tua area geografica, ti consigliamo di selezionare: .
Puoi anche selezionare un sito web dal seguente elenco:
Come ottenere le migliori prestazioni del sito
Per ottenere le migliori prestazioni del sito, seleziona il sito cinese (in cinese o in inglese). I siti MathWorks per gli altri paesi non sono ottimizzati per essere visitati dalla tua area geografica.
Americhe
- América Latina (Español)
- Canada (English)
- United States (English)
Europa
- Belgium (English)
- Denmark (English)
- Deutschland (Deutsch)
- España (Español)
- Finland (English)
- France (Français)
- Ireland (English)
- Italia (Italiano)
- Luxembourg (English)
- Netherlands (English)
- Norway (English)
- Österreich (Deutsch)
- Portugal (English)
- Sweden (English)
- Switzerland
- United Kingdom (English)