Contextual neural gas for spatial clustering and analysis

    Research output: Contribution to journalArticleAcademicpeer-review

    Abstract

    This study aims to introduce contextual Neural Gas (CNG), a variant of the Neural Gas algorithm, which explicitly accounts for spatial dependencies within spatial data. The main idea of the CNG is to map spatially close observations to neurons, which are close with respect to their rank distance. Thus, spatial dependency is incorporated independently from the attribute values of the data. To discuss and compare the performance of the CNG and GeoSOM, this study draws from a series of experiments, which are based on two artificial and one real-world dataset. The experimental results of the artificial datasets show that the CNG produces more homogenous clusters, a better ratio of positional accuracy, and a lower quantization error than the GeoSOM. The results of the real-world dataset illustrate that the resulting patterns of the CNG are theoretically more sound and coherent than that of the GeoSOM, which emphasizes its applicability for geographic analysis tasks.
    Original languageEnglish
    Pages (from-to)251-266
    JournalInternational Journal of Geographical Information Science
    Volume27
    Issue number2
    DOIs
    Publication statusPublished - 2013

    Keywords

    • machine learning
    • self-organizing maps
    • spatial cluster analysis

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