Co-location rules discovery process focused on reference spatial features using decision tree learning

Abstract

The co-location discovery process serves to find subsets of spatial features frequently located together. Many algorithms and methods have been designed in recent years; however, finding this kind of patterns around specific spatial features is a task in which the existing solutions provide incorrect results. Throughout this paper we propose a knowledge discovery process to find co-location patterns focused on reference features using decision tree learning algorithms on transactional data generated using maximal cliques. A validation test of this process is provided.

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Keywords

Co-location patterns, Spatial data mining, Decision trees algorithms, Maximal cliques, Knowledge discovery process

Citation

Advances in Artificial Intelligence: From Theory to Practice 10350: 221-226 (2017)

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Creative Commons license

Except where otherwised noted, this item's license is described as info:eu-repo/semantics/openAccess