Azure Data Scientists Associate Practice Exam

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What is one common feature selection method used in machine learning?

Principal Component Analysis

Recursive Feature Elimination (RFE)

Recursive Feature Elimination (RFE) is a widely recognized feature selection method used in machine learning. This technique works by recursively removing the least important features from the dataset and building a model on the remaining features to determine which features contribute most to the predictive accuracy of the model. The process continues until the desired number of features is reached, ensuring that only the most significant predictors remain in the model.

RFE is especially useful because it not only reduces the dimensionality of the data but also helps improve model performance by eliminating noise and irrelevant features, which can lead to better generalization on unseen data. RFE can be applied in combination with various machine learning algorithms, which facilitates its integration into broader field applications.

The other methods listed, while they have their own roles and importance in machine learning, are not primarily considered feature selection methods in the same direct manner as RFE. For instance, Principal Component Analysis is a dimensionality reduction technique, Random Forest is primarily an ensemble learning method used for classification and regression, and Support Vector Machines are classification algorithms. Though these methods may indirectly influence feature selection in certain contexts, RFE distinctly serves the purpose of explicitly selecting features based on their importance in model performance.

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Random Forest

Support Vector Machines

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