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

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What does the 'curse of dimensionality' refer to in machine learning?

The phenomenon of data redundancy in low dimensions

A technique to increase data interpretability

The difficulty of generalization as the number of dimensions increases

The 'curse of dimensionality' refers to the challenges and difficulties that arise when working with data in high-dimensional spaces, particularly in the context of machine learning and data analysis. As the dimensionality of the dataset increases, the volume of the space increases exponentially, which leads to sparse data points. This sparsity makes it difficult for models to learn and generalize effectively, as the data becomes less representative and models may struggle to identify patterns due to the overwhelming number of dimensions.

In high-dimensional spaces, instances that are close together in lower dimensions may become far apart, affecting the performance of distance-based algorithms typically used in clustering or classification tasks. This phenomenon also leads to overfitting, where the model learns noise rather than the underlying distribution of the data, further complicating generalization to unseen data.

The options regarding data redundancy, interpretability, and diversity do not address the inherent challenges posed by high-dimensional data, which is central to understanding the curse of dimensionality. Hence, focusing on how generalization becomes increasingly difficult as dimensions rise provides the key insights into this concept.

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A method to enhance data diversity

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