2023
DOI: 10.1109/tvcg.2023.3327187
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Classes are not Clusters: Improving Label-based Evaluation of Dimensionality Reduction

Hyeon Jeon,
Yun-Hsin Kuo,
Michaël Aupetit
et al.

Abstract: A common way to evaluate the reliability of dimensionality reduction (DR) embeddings is to quantify how well labeled classes form compact, mutually separated clusters in the embeddings. This approach is based on the assumption that the classes stay as clear clusters in the original high-dimensional space. However, in reality, this assumption can be violated; a single class can be fragmented into multiple separated clusters, and multiple classes can be merged into a single cluster. We thus cannot always assure … Show more

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