Azure Data Scientists Associate Practice Exam

Question: 1 / 400

What does feature scaling accomplish in the machine learning process?

It adjusts the visibility of data during training

It adjusts the range of feature values to make model training faster and more efficient

Feature scaling plays a crucial role in the machine learning process by transforming the range of feature values. This adjustment to the scale of features makes model training not only faster but also more efficient. Many machine learning algorithms, particularly those based on distance calculations like k-nearest neighbors or gradient descent-based methods, can be significantly affected by the scale of the input features. If features have very different scales, it can lead to suboptimal model performance because the model might give undue weight to features with larger ranges.

By normalizing or standardizing feature values to a common scale, different features contribute equally to the distance calculations and gradient updates during training. This ensures that the optimization process converges more quickly and reliably, leading to better performance of the trained model.

Other options do not align with the primary purpose of feature scaling. For example, adjusting visibility has no direct impact on model performance. Increasing dimensionality is contrary to the primary goal of feature scaling, which is to facilitate better model training with existing features. While interpretability is important, feature scaling does not directly enhance it; rather, it prepares the data for effective model training.

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It increases the dimensionality of datasets

It enhances the interpretability of model outputs

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