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A general model for creating robust choropleth maps.

Authors :
Mu, Wangshu
Tong, Daoqin
Source :
Computers, Environment & Urban Systems. Sep2022, Vol. 96, pN.PAG-N.PAG. 1p.
Publication Year :
2022

Abstract

Choropleth maps visualize areal geographical data by grouping data into a few map classes and assigning different colors, shades, or patterns. Recent studies show that data uncertainty, commonly observed in real-life applications, should also be accounted for when determining the best classification scheme. Due to data uncertainty, a few studies note that map units might be placed in a wrong class, and the concept of map robustness has been introduced to minimize such misplacement. Recently, an algorithm has been developed to integrate robustness into the design of the optimal map classification scheme. However, the existing algorithm has two limitations: first, it is only suitable for certain robustness metrics. Second, when identifying the optimal class breaks, the existing algorithm requires predefined candidate class break values, which might lead to sub-optimal solutions. This paper resolves these issues by proposing a new model, namely, the Continuous Robust Map Classification Problem (CRMCP), and the associated solution approach. The CRMCP allows mapmakers to customize robustness metrics according to their data and applications. In addition, a particle swarm optimization algorithm is developed to solve the CRMCP. The model and algorithm are tested using American Community Survey data. Test results suggest that the new approach can find better solutions than the existing algorithm. The study improves the usability of choropleth maps when uncertain geographical attributes are involved and allows spatial analysts and decision-makers to incorporate robustness into the mapmaking process more flexibly. • Robustness is a new perspective in determining the class break values for choropleth maps. • CRMCP allows flexible robustness definition and continuous class break values for mapping uncertain geographical attributes. • A particle swarm optimization algorithm is developed to solve the CRMCP model. • The proposed algorithm outperform the existing ones in terms of solution quality, efficiency, and versatility. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01989715
Volume :
96
Database :
Academic Search Index
Journal :
Computers, Environment & Urban Systems
Publication Type :
Academic Journal
Accession number :
158038902
Full Text :
https://doi.org/10.1016/j.compenvurbsys.2022.101850