AI Engineering Degree Practice Exam 2025 - Free AI Engineering Practice Questions and Study Guide

Question: 1 / 400

In clustering evaluation, what does the "elbow point" signify?

A sudden decline in accuracy.

The point where accuracy stabilizes.

A steep increase in accuracy with increasing clusters.

The concept of the "elbow point" in clustering evaluation is associated with determining the optimal number of clusters for a given dataset. It is derived from observing a plot of the within-cluster sum of squares (WCSS) or another relevant metric against the number of clusters. As more clusters are added, the WCSS decreases because the clusters can better fit the data points.

The "elbow point" refers to the location on this plot where the rate of decrease sharply changes. Initially, as clusters increase, there is a significant reduction in the WCSS; this is often characterized by a steep decline and indicates that the model is improving markedly. However, beyond a certain point, adding more clusters results in diminishing returns, and the benefit of additional clusters becomes less clear. This inflection point resembles an "elbow" in shape.

Identifying this elbow point is crucial as it helps in deciding the number of clusters that best represents the data without overfitting. The steep increase in the rate of accuracy improvement initially observed aligns with this concept, making it clear why this option is relevant to the idea of the elbow point.

This option emphasizes the importance of balancing complexity in clustering tasks, which aids in achieving a model that generalizes well to unseen data

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The optimal number of clusters is reached.

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