Litcius/Paper detail

Validation of cluster analysis results on validation data: A systematic framework

Theresa Ullmann, Christian Hennig, Anne‐Laure Boulesteix

2021Wiley Interdisciplinary Reviews Data Mining and Knowledge Discovery125 citationsDOIOpen Access PDF

Abstract

Abstract Cluster analysis refers to a wide range of data analytic techniques for class discovery and is popular in many application fields. To assess the quality of a clustering result, different cluster validation procedures have been proposed in the literature. While there is extensive work on classical validation techniques, such as internal and external validation, less attention has been given to validating and replicating a clustering result using a validation dataset. Such a dataset may be part of the original dataset, which is separated before analysis begins, or it could be an independently collected dataset. We present a systematic, structured review of the existing literature about this topic. For this purpose, we outline a formal framework that covers most existing approaches for validating clustering results on validation data. In particular, we review classical validation techniques such as internal and external validation, stability analysis, and visual validation, and show how they can be interpreted in terms of our framework. We define and formalize different types of validation of clustering results on a validation dataset, and give examples of how clustering studies from the applied literature that used a validation dataset can be seen as instances of our framework. This article is categorized under: Technologies > Structure Discovery and Clustering Algorithmic Development > Statistics Technologies > Machine Learning

Topics & Concepts

Computer scienceCluster analysisData miningConsensus clusteringMachine learningArtificial intelligenceFuzzy clusteringCURE data clustering algorithmAdvanced Clustering Algorithms ResearchData Mining Algorithms and ApplicationsData Analysis with R