Artificial Intelligence Programming Practice Exam 2026 - Free AI Programming Practice Questions and Study Guide

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What do convolutional layers in CNNs primarily extract from data?

Statistical features

Hierarchical features

Convolutional layers in Convolutional Neural Networks (CNNs) primarily extract hierarchical features from data, which is essential for understanding and classifying visual information. Hierarchical features refer to the manner in which complex patterns are built from simpler patterns. In a CNN, the initial layers often identify simple features such as edges and textures. As the data progresses through deeper layers, these features combine and evolve into more complex shapes, objects, or even entire scenes, reflecting a hierarchy of information.

This hierarchical approach is particularly beneficial in tasks like image recognition, where recognizing more intricate shapes or patterns relies on understanding the basic elements that compose them. For example, the first layer might detect edges, the next layer could combine these edges to find corners or textures, and subsequent layers assemble these components into recognizable objects like faces or animals, thereby capturing a comprehensive representation of the input data.

In contrast, the other options do not accurately describe the function of convolutional layers. Statistical features might relate to broader data analysis but do not specifically capture the layered approach used in feature extraction in CNNs. Random features lack structured significance in the context of learning, and simple features alone do not account for the complexity and depth of understanding achieved through hierarchical feature extraction.

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Random features

Simple features only

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