Artificial Intelligence Programming Practice Exam 2025 - Free AI Programming Practice Questions and Study Guide

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What does the term 'feature extraction' refer to?

The process of removing irrelevant data

The method of transforming raw data into a suitable format for modeling

A way to reduce the number of variables

All of the above

Feature extraction is a crucial step in the processing of raw data for machine learning and artificial intelligence applications. It involves transforming raw data into a format that can be effectively used for modeling, which allows for better predictive performance.

Removing irrelevant data is intrinsic to feature extraction, as it helps streamline the dataset by eliminating unnecessary noise that could hinder model performance. This step ensures that only the most pertinent data attributes are retained for analysis.

Additionally, feature extraction often encompasses dimensionality reduction, which refers to the process of reducing the number of input variables in a dataset. By distilling information to the most essential features, models can become more efficient, leading to improved performance, reduced training time, and decreased computational overhead.

Therefore, the concept of feature extraction integrates all these aspects, making it a comprehensive approach that encompasses the removal of irrelevant data, transformation into a usable format, and reduction of variables for effective modeling.

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