Publication: Pipeline to identify dominant features in spatial data
Pipeline to identify dominant features in spatial data
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Flury, R., & Furrer, R. (2022). Pipeline to identify dominant features in spatial data. Journal of Computational Mathematics and Data Science, 5, 100063. https://doi.org/10.1016/j.jcmds.2022.100063
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Dominant-feature identification decomposes spatial data into several additive components to make different features apparent on each component. It recognizes their dominant features credibly and assesses feature attributes. This paper describes the pipeline to apply this method to regular and irregular lattice data as well as geostatistical data. These implementations are all openly available and templates for each case are provided in an associated git repository. As geostatistical data is typically large, we propose several efficien
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Citations
Flury, R., & Furrer, R. (2022). Pipeline to identify dominant features in spatial data. Journal of Computational Mathematics and Data Science, 5, 100063. https://doi.org/10.1016/j.jcmds.2022.100063