Abstract

Data clustering describes a set of frequently employed techniques in exploratory data analysis to extract “natural” group structure in data. Such groupings need to be validated to separate the signal in the data from spurious structure. In this context, finding an appropriate number of clusters is a particularly important model selection question. We introduce a measure of cluster stability to assess the validity of a cluster model. This stability measure quantifies the reproducibility of clustering solutions on a second sample, and it can be interpreted as a classification risk with regard to class labels produced by a clustering algorithm. The preferred number of clusters is determined by minimizing this classification risk as a function of the number of clusters. Convincing results are achieved on simulated as well as gene expression data sets. Comparisons to other methods demonstrate the competitive performance of our method and its suitability as a general validation tool for clustering solutions in real-world problems.

Keywords

Cluster analysisSpurious relationshipStability (learning theory)Data miningContext (archaeology)Computer scienceMeasure (data warehouse)Single-linkage clusteringSet (abstract data type)Correlation clusteringPattern recognition (psychology)Data setArtificial intelligenceClustering high-dimensional dataCURE data clustering algorithmMathematicsMachine learning

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Publication Info

Year
2004
Type
article
Volume
16
Issue
6
Pages
1299-1323
Citations
508
Access
Closed

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Tilman Lange, Volker Röth, Mikio L. Braun et al. (2004). Stability-Based Validation of Clustering Solutions. Neural Computation , 16 (6) , 1299-1323. https://doi.org/10.1162/089976604773717621

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DOI
10.1162/089976604773717621