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

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What is a common objective of dimensionality reduction techniques?

To increase the number of features for training

To extract important features while reducing noise

Dimensionality reduction techniques aim to simplify datasets by decreasing the number of input variables or features while retaining the essential information necessary for analysis. The objective of extracting important features while reducing noise is central to these techniques. By focusing on the relevant aspects of the data, these methods help enhance model performance and interpretability.

In practice, high-dimensional datasets often include not only important features but also a lot of redundant or irrelevant variables, which can introduce noise and complicate the learning process. Dimensionality reduction techniques, such as Principal Component Analysis (PCA) or t-distributed Stochastic Neighbor Embedding (t-SNE), work to identify and preserve the most informative features, thereby filtering out less important information.

This emphasis on maintaining key information while minimizing noise plays a crucial role in building efficient and effective machine learning models, making the correct answer highly relevant in the context of data analysis and AI programming.

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To create more complex data structures

To increase computational overhead during training

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