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The Fundamental Clustering and Projection Suite (FCPS): A Dataset Collection to Test the Performance of Clustering and Data Projection Algorithms

Alfred Ultsch, Jörn Lötsch

2020Data29 citationsDOIOpen Access PDF

Abstract

In the context of data science, data projection and clustering are common procedures. The chosen analysis method is crucial to avoid faulty pattern recognition. It is therefore necessary to know the properties and especially the limitations of projection and clustering algorithms. This report describes a collection of datasets that are grouped together in the Fundamental Clustering and Projection Suite (FCPS). The FCPS contains 10 datasets with the names “Atom”, “Chainlink”, “EngyTime”, “Golfball”, “Hepta”, “Lsun”, “Target”, “Tetra”, “TwoDiamonds”, and “WingNut”. Common clustering methods occasionally identified non-existent clusters or assigned data points to the wrong clusters in the FCPS suite. Likewise, common data projection methods could only partially reproduce the data structure correctly on a two-dimensional plane. In conclusion, the FCPS dataset collection addresses general challenges for clustering and projection algorithms such as lack of linear separability, different or small inner class spacing, classes defined by data density rather than data spacing, no cluster structure at all, outliers, or classes that are in contact. This report describes a collection of datasets that are grouped together in the Fundamental Clustering and Projection Suite (FCPS). It is designed to address specific problems of structure discovery in high-dimensional spaces.

Topics & Concepts

Cluster analysisProjection (relational algebra)Computer scienceSuiteContext (archaeology)Data miningClass (philosophy)Cluster (spacecraft)OutlierSingle-linkage clusteringClustering high-dimensional dataPattern recognition (psychology)Artificial intelligenceAlgorithmCURE data clustering algorithmCorrelation clusteringGeographyProgramming languageArchaeologyAdvanced Clustering Algorithms ResearchGene expression and cancer classificationData Mining Algorithms and Applications