The impact of random models on clustering similarity

Loading...
Thumbnail Image
Can’t use the file because of accessibility barriers? Contact us

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

Clustering is a central approach for unsupervised learning. After clustering is applied, the most fundamental analysis is to quantitatively compare clusterings. Such comparisons are crucial for the evaluation of clustering methods as well as other tasks such as consensus clustering. It is often argued that, in order to establish a baseline, clustering similarity should be assessed in the context of a random ensemble of clusterings. The prevailing assumption for the random clustering ensemble is the permutation model in which the number and sizes of clusters are fixed. However, this assumption does not necessarily hold in practice; for example, multiple runs of K-means clustering returns clusterings with a fixed number of clusters, while the cluster size distribution varies greatly. Here, we derive corrected variants of two clustering similarity measures (the Rand index and Mutual Information) in the context of two random clustering ensembles in which the number and sizes of clusters vary. In addition, we study the impact of one-sided comparisons in the scenario with a reference clustering. The consequences of different random models are illustrated using synthetic examples, handwriting recognition, and gene expression data. We demonstrate that the choice of random model can have a drastic impact on the ranking of similar clustering pairs, and the evaluation of a clustering method with respect to a random baseline; thus, the choice of random clustering model should be carefully justified.

Description

Keywords

Citation

Gates, Alexander J, and Ahn, Yong-Yeol. "The impact of random models on clustering similarity." Journal of Machine Learning Research, vol. 18, pp. 1, 2017-7-1.

Journal

Journal of Machine Learning Research

DOI

Link(s) to data and video for this item

Relation

Rights

Type