AI Engineering Degree Practice Exam 2025 - Free AI Engineering Practice Questions and Study Guide

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In which scenario would it be advantageous to use SVM?

When the data is not linearly separable

When classes are well-separated in lower dimensions

When the data can be easily clustered

When mapping data to a higher dimensional feature space can better separate classes

Using a Support Vector Machine (SVM) is particularly advantageous in situations where mapping data to a higher-dimensional feature space can improve class separation. This is a fundamental principle behind SVMs, as they are specifically designed to find the optimal hyperplane that separates classes in the most effective manner.

When the classes in the original feature space are not linearly separable, SVMs employ a technique known as the "kernel trick." This method allows the algorithm to transform the data into a higher-dimensional space where it becomes easier to separate the classes with a linear boundary. By leveraging different kernel functions—such as polynomial or radial basis function (RBF)—SVM can create complex decision boundaries that would be impossible to achieve in lower dimensions.

This ability to work effectively in higher-dimensional spaces is what makes SVM a powerful tool, especially in cases where the structure of the data is complicated, and linear separation is insufficient. Consequently, SVM is well-suited for a range of applications where classes may not be independent or well-separated in the original feature space.

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