LGJul 18, 2024

From A-to-Z Review of Clustering Validation Indices

arXiv:2407.20246v154 citationsh-index: 16
Originality Synthesis-oriented
AI Analysis

This is an incremental review that helps researchers in data clustering by organizing and assessing validation indices to improve cluster quality evaluation.

The study provides a comprehensive review and classification of internal and external cluster validity indices, evaluating their performance on common clustering algorithms like ECA* and proposing a framework to aid researchers in selecting appropriate measures based on criteria such as ideal values and user-friendliness.

Data clustering involves identifying latent similarities within a dataset and organizing them into clusters or groups. The outcomes of various clustering algorithms differ as they are susceptible to the intrinsic characteristics of the original dataset, including noise and dimensionality. The effectiveness of such clustering procedures directly impacts the homogeneity of clusters, underscoring the significance of evaluating algorithmic outcomes. Consequently, the assessment of clustering quality presents a significant and complex endeavor. A pivotal aspect affecting clustering validation is the cluster validity metric, which aids in determining the optimal number of clusters. The main goal of this study is to comprehensively review and explain the mathematical operation of internal and external cluster validity indices, but not all, to categorize these indices and to brainstorm suggestions for future advancement of clustering validation research. In addition, we review and evaluate the performance of internal and external clustering validation indices on the most common clustering algorithms, such as the evolutionary clustering algorithm star (ECA*). Finally, we suggest a classification framework for examining the functionality of both internal and external clustering validation measures regarding their ideal values, user-friendliness, responsiveness to input data, and appropriateness across various fields. This classification aids researchers in selecting the appropriate clustering validation measure to suit their specific requirements.

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