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When Traditional Selection Fails: How to Improve Settlement Selection for Small-Scale Maps Using Machine Learning

Autor
WereszczyƄska, Karolina
Karsznia, Izabela
Data publikacji
2020
Abstrakt (EN)

Effective settlements generalization for small-scale maps is a complex and challenging task. Developing a consistent methodology for generalizing small-scale maps has not gained enough attention, as most of the research conducted so far has concerned large scales. In the study reported here, we want to fill this gap and explore settlement characteristics, named variables that can be decisive in settlement selection for small-scale maps. We propose 33 variables, both thematic and topological, which may be of importance in the selection process. To find essential variables and assess their weights and correlations, we use machine learning (ML) models, especially decision trees (DT) and decision trees supported by genetic algorithms (DT-GA). With the use of ML models, we automatically classify settlements as selected and omitted. As a result, in each tested case, we achieve automatic settlement selection, an improvement in comparison with the selection based on official national mapping agency (NMA) guidelines and closer to the results obtained in manual map generalization conducted by experienced cartographers

SƂowa kluczowe EN
cartographic generalization
machine learning
settlement selection
small-scale
Dyscyplina PBN
geografia spoƂeczno-ekonomiczna i gospodarka przestrzenna
Czasopismo
ISPRS International Journal of Geo-Information
Tom
9
Zeszyt
4
Strony od-do
230
Data udostępnienia w otwartym dostępie
2020-04-09
Licencja otwartego dostępu
Inna