CompTIA DataX DY0-001 (V1) Practice Question

A data scientist is using the k-means algorithm for customer segmentation. After visualizing the results, they observe that the algorithm fails to correctly partition several distinct, elongated customer groups, merging them into single, large clusters. What is the most likely underlying reason for this suboptimal clustering performance?

  • The initial placement of centroids was suboptimal, leading to convergence on a local minimum.

  • The value of 'k' was incorrectly chosen, and a different number of clusters would resolve the issue.

  • The algorithm is struggling due to unscaled numerical features and the presence of categorical data.

  • K-means inherently assumes that clusters are convex and isotropic, making it struggle with elongated or irregularly shaped clusters.

CompTIA DataX DY0-001 (V1)
Machine Learning
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