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Erschienen in: Information Systems Frontiers 3/2021

15.02.2020 | Manuscript

Vector Gravitation Clustering Networks

verfasst von: Zong-chang Yang

Erschienen in: Information Systems Frontiers | Ausgabe 3/2021

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Abstract

In pattern recognition, patterns are described in terms of features. The features form feature vectors in the feature space. In the light of the phenomenon of gravitation in star clusters, we define patterns in the feature space to self-organize into clustering networks called “vector gravitation clustering networks” in this study. In the proposed clustering method, one called “vector gravitational force” is employed for the similarity measure in the feature space. Then by means of the “vector gravitational force”, patterns self-organize clustering networks called “vector gravitation clustering networks” in the feature space. The proposed clustering method is applied to experiments. The experimental results show workability of the proposed clustering method. It is revealed that patterns tend to have more called “vector gravitational force” between ones of the same categories than between ones of the different categories in the feature space. Finally, further performance analysis employing the ANOVA (“analysis of variance”) and the Newman-Keul procedure indicates potentiality of the proposed clustering method. As being inspired by the phenomenon of gravitation in star clusters and by using the “vector gravitational force” for similarity measure, “interpretability” is one obvious advantage of the proposed clustering method, and it may be viewed as one natural clustering method.

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Metadaten
Titel
Vector Gravitation Clustering Networks
verfasst von
Zong-chang Yang
Publikationsdatum
15.02.2020
Verlag
Springer US
Erschienen in
Information Systems Frontiers / Ausgabe 3/2021
Print ISSN: 1387-3326
Elektronische ISSN: 1572-9419
DOI
https://doi.org/10.1007/s10796-020-09986-3

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