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

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How can a hyperplane in Support Vector Machines (SVM) be best described?

A way to visualize high-dimensional data.

The method for calculating cluster centroids.

Decision boundaries that separate different classes.

A hyperplane in the context of Support Vector Machines (SVM) serves as a decision boundary that effectively segregates data points belonging to different classes in a dataset. In the SVM framework, the objective is to identify the hyperplane that maximizes the margin between these classes. The idea is to position this hyperplane in such a way that the distance between the nearest data points from either class and the hyperplane is maximized, thus enhancing the classifier's robustness and performance.

This concept is crucial because the correct placement of the hyperplane directly impacts the SVM's ability to generalize and predict new data points accurately. Understanding the role of hyperplanes aids in grasping how SVMs work, particularly in distinguishing classes in both linear and non-linear scenarios through kernel techniques. The hyperplane's orientation and position determine the outcomes of classification tasks by delineating the regions in the feature space designated for each class.

The other options, while related to SVM and data analysis, do not accurately define the specific role of a hyperplane within this context.

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A technique for reducing dimensionality.

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