Author:
Gastner Michael T.,Seguy Vivien,More Pratyush
Abstract
Cartograms are maps that rescale geographic regions (e.g., countries, districts) such that their areas are proportional to quantitative demographic data (e.g., population size, gross domestic product). Unlike conventional bar or pie charts, cartograms can represent correctly which regions share common borders, resulting in insightful visualizations that can be the basis for further spatial statistical analysis. Computer programs can assist data scientists in preparing cartograms, but developing an algorithm that can quickly transform every coordinate on the map (including points that are not exactly on a border) while generating recognizable images has remained a challenge. Methods that translate the cartographic deformations into physics-inspired equations of motion have become popular, but solving these equations with sufficient accuracy can still take several minutes on current hardware. Here we introduce a flow-based algorithm whose equations of motion are numerically easier to solve compared with previous methods. The equations allow straightforward parallelization so that the calculation takes only a few seconds even for complex and detailed input. Despite the speedup, the proposed algorithm still keeps the advantages of previous techniques: With comparable quantitative measures of shape distortion, it accurately scales all areas, correctly fits the regions together, and generates a map projection for every point. We demonstrate the use of our algorithm with applications to the 2016 US election results, the gross domestic products of Indian states and Chinese provinces, and the spatial distribution of deaths in the London borough of Kensington and Chelsea between 2011 and 2014.
Publisher
Proceedings of the National Academy of Sciences
Reference45 articles.
1. de Veaux RD Velleman PF Bock DE (2016) Stats: Data and Models (Pearson, Harlow, UK), 4th Ed.
2. Thirty Five Years of Computer Cartograms
3. The state of the art in cartograms;Nusrat;Computer Graphics Forum,2016
4. From The Cover: Diffusion-based method for producing density-equalizing maps
5. Gamio L (2016) Election maps are telling you big lies about small things. The Washington Post, Nov 1, 2016. Available at https://www.washingtonpost.com/graphics/politics/2016-election/how-election-maps-lie/. Accessed April 25, 2017.
Cited by
44 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献