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Text/Conference Paper
Author(s) -
Benjamin Schelling,
Claudia Plant
Publication year - 2019
Publication title -
gesellschaft für informatik (gi)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.18420/inf2019_31
Subject(s) - cluster analysis , computer science , cure data clustering algorithm , data mining , correlation clustering , canopy clustering algorithm , data stream clustering , fuzzy clustering , scaling , set (abstract data type) , focus (optics) , data set , clustering high dimensional data , data structure , artificial intelligence , mathematics , physics , optics , programming language , geometry
A data set might have a well-defined structure, but this does not necessarily lead to good clustering results. If the structure is hidden in an unfavourable scaling, clustering will usually fail. The aim of this work is to present a technique which enhances the data set by re-scaling and transforming its features and thus emphasizing and accentuating its structure. If the structure is sufficiently clear, clustering algorithms will perform far better. To show that our algorithm works well, we have conducted extensive experiments on several real-world data sets, where we improve clustering not only for k-means, which is our main focus, but also for other standard clustering algorithms.

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