IBM Data Science Practice Test 2025 – Comprehensive Exam Prep

Question: 1 / 400

What does the term "hyperplane" refer to in the context of support vector machines?

A type of neural network layer

A decision boundary that separates different classes

In the context of support vector machines (SVM), the term "hyperplane" specifically refers to the decision boundary that separates different classes in a multi-dimensional space. This concept is fundamental to how SVM operates, as the algorithm seeks to identify the optimal hyperplane that maximally separates the data points of different classes.

In SVM, the hyperplane is defined in a feature space where the data points are represented as vectors. The goal is to find a hyperplane that divides the dataset into two distinct categories while maintaining the widest possible margin between the closest points of each class, known as support vectors. This maximization of the margin contributes to the robustness and generalization capabilities of the SVM.

Understanding the role of the hyperplane in SVM is crucial for grasping how the algorithm effectively classifies new data points based on their position relative to this boundary. The ability to identify and construct this decision boundary is what enables SVMs to perform classification tasks with a high degree of accuracy.

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A statistical method for feature selection

A measure of data spread

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