Litcius/Paper detail

Clustering with Minimum Spanning Trees: How Good Can It Be?

Marek Ga̧golewski, Anna Cena, Maciej Bartoszuk, Łukasz Brzozowski

2024Journal of Classification19 citationsDOIOpen Access PDF

Abstract

Abstract Minimum spanning trees (MSTs) provide a convenient representation of datasets in numerous pattern recognition activities. Moreover, they are relatively fast to compute. In this paper, we quantify the extent to which they are meaningful in low-dimensional partitional data clustering tasks. By identifying the upper bounds for the agreement between the best (oracle) algorithm and the expert labels from a large battery of benchmark data, we discover that MST methods can be very competitive. Next, we review, study, extend, and generalise a few existing, state-of-the-art MST-based partitioning schemes. This leads to some new noteworthy approaches. Overall, the Genie and the information-theoretic methods often outperform the non-MST algorithms such as K-means, Gaussian mixtures, spectral clustering, Birch, density-based, and classical hierarchical agglomerative procedures. Nevertheless, we identify that there is still some room for improvement, and thus the development of novel algorithms is encouraged.

Topics & Concepts

Cluster analysisMinimum spanning treeComputer scienceBenchmark (surveying)Spectral clusteringPattern recognition (psychology)GaussianArtificial intelligenceData miningOracleRepresentation (politics)Machine learningAlgorithmPolitical scienceGeographySoftware engineeringQuantum mechanicsPhysicsGeodesyPoliticsLawAdvanced Clustering Algorithms ResearchComplex Network Analysis TechniquesBayesian Methods and Mixture Models