IBM Data Science Practice Test 2025 – Comprehensive Exam Prep

Question: 1 / 400

What does "deep learning" primarily focus on?

Supervised learning with limited datasets

Neural networks with few layers for simple tasks

Neural networks with many layers to learn data representations

Deep learning primarily focuses on utilizing neural networks that contain many layers, often referred to as deep neural networks, to learn complex representations of data. This hierarchical learning approach allows deep learning models to automatically extract features from raw data through multiple layers of transformation. Each layer takes the output of the previous one and applies a series of nonlinear transformations, enabling the model to learn progressively more abstract features.

For instance, when processing images, initial layers might detect edges, while deeper layers could recognize shapes, and even deeper layers might identify more complex patterns like faces or objects. This capability to automatically tune to intricate patterns and hierarchies in data is what distinguishes deep learning from traditional machine learning techniques that often require manual feature extraction.

In contrast, the other choices do not capture the essence of deep learning effectively. While supervised learning and statistical methods play critical roles in machine learning, they do not emphasize deep networks with many layers, which is a defining characteristic of deep learning.

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Traditional statistical methods for data analysis

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