Geographic Information Systems Studies Open access Peer reviewed

Big Data, Crowdsourcing, and Volunteered Geographic Information Challenge Core Conceptual Neighborhood Graph Assumptions

Matthew P. Dube, Brendan P. Hall, Tyler Thibeau

Geomatics | Jun 4, 2026

Abstract

Abstract

The big data revolution transformed how we think of data analytics in many ways. Critical amongst them are the somewhat interconnected ideas of volunteered geographic information, crowdsourcing, and the big data property of variety. The robust literature concerning conceptual neighborhood graphs in two of these cases considers objects whose datatypes are held stable between the relations under consideration. This, however, is a limiting factor in these three application spaces due to the unknown form that data will take. This paper considers two avenues for the conceptual neighborhood graph to take as directions to address current complications facing reasoning tasks within a practically dirty world motivated by various sources of data: discretization conceptual neighborhood graphs (changing between corresponding vector and raster spaces) and cartographic generalization conceptual neighborhood graphs (changing the form of the objects in question). This paper provides insights as to what considerations should be considered when embarking upon this idea and demonstrates these concepts applied to prior conceptual neighborhood graphs.

Direct answer

What can I do from this paper page?

Use this page to scan "Big Data, Crowdsourcing, and Volunteered Geographic Information Challenge Core Conceptual Neighborhood Graph Assumptions" quickly: start with the summary and abstract, then check the authors, source, topics, and related papers. From here, open Scollr to follow Geographic Information Systems Studies research, save the paper, or map adjacent work.

Authors

Researchers on this paper

Matthew P. Dube

first | University of Maine | ORCID 0000-0002-7104-9982

Brendan P. Hall

middle | Bangor University

Tyler Thibeau

last | University of Maine

Research areas

Follow related topics

Citation

BibTeX

@article{Dube2026Data,
  title = {Big Data, Crowdsourcing, and Volunteered Geographic Information Challenge Core Conceptual Neighborhood Graph Assumptions},
  author = {Matthew P. Dube and Brendan P. Hall and Tyler Thibeau},
  journal = {Geomatics},
  year = {2026},
  doi = {10.3390/geomatics6030064},
  url = {https://doi.org/10.3390/geomatics6030064}
}

FAQ

Using this paper in a discovery workflow

How do I find related work for this paper?

Use the related papers and topic links on this page as starting points. In Scollr, you can also open the paper and build a literature map around its references, citing papers, and related work.

How can I keep up with new Geographic Information Systems Studies research papers?

Follow Geographic Information Systems Studies research in Scollr. New papers from the topic flow into a personalized feed, and you can save useful studies to revisit later.

Can I cite this paper from this page?

This page includes a static BibTeX block for Big Data, Crowdsourcing, and Volunteered Geographic Information Challenge Core Conceptual Neighborhood Graph Assumptions. Always verify the DOI, source, and publication details against the publisher record before submitting a manuscript.

Follow this research in Scollr

Follow the topics and authors behind this paper, save useful studies, and build a literature map when you are ready to go deeper.

Get the app