Artificial Intelligence Programming 2025 – 400 Free Practice Questions to Pass the Exam

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How does the kernel trick benefit Support Vector Machines (SVMs)?

It reduces the dimensionality of the data

It transforms data into a higher-dimensional space for better separation

The kernel trick is a powerful technique used in Support Vector Machines (SVMs) that allows the algorithm to operate in a higher-dimensional space without the need to explicitly transform the data. This is crucial because many datasets that are not linearly separable in their original feature space can become linearly separable when mapped to a higher-dimensional space. By using the kernel trick, SVMs can find a hyperplane that effectively separates different classes in this transformed space, leading to improved classification performance.

The kernel function computes the similarity between data points, allowing SVMs to create non-linear decision boundaries by applying a linear classifier in this implicit higher-dimensional space. Consequently, this process enhances the SVM's ability to capture complex patterns and relationships within the data that might otherwise go unnoticed in lower dimensions. Hence, transforming the data into a higher-dimensional space is fundamental to exploiting the advantages of SVMs, making option B the correct choice.

Other options, while related to SVMs, do not accurately describe the specific benefit of the kernel trick. Reducing dimensionality is generally associated with techniques aimed at simplifying data rather than enhancing separation through the kernel trick. Simplifying the model training process does not capture the essence of how the kernel trick facilitates improved

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It simplifies the model training process

It combines multiple kernels for enhanced performance

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