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Multivariate map

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Bivariate choropleth map comparing the Black (blue) and Hispanic (red) populations in the United States, 2010 census; shades of purple show significant proportions of both groups.

A bivariate map (or multivariate map) is a type of thematic map that displays two or more variables on a single map by combining two different sets of symbols.[1] Each of the variables is represented using a standard thematic map technique, such as choropleth, cartogram, or proportional symbols. They may be the same type or different types, and they may be on separate layers of the map, or they may be combined into a single multivariate symbol.

The typical objective of a multivariate map is to visualize any statistical or geographic relationship between the variables. It has potential to reveal relationships between variables more effectively than a side-by-side comparison of the corresponding univariate maps, but also has the danger of Cognitive overload when the symbols and patterns are too complex to easily understand.[2]: 331 

History

An 1858 multivariate map by Charles Joseph Minard, using a nominal choropleth to represent departments that supplied meat to be consumed in Paris, proportional circles to represent significant volumes of that meat, combined with pie charts dividing it into relative proportions of beef (black), veal (red), and mutton (green).

The first multivariate maps appeared in the early Industrial era (1830-1860), at the same time that thematic maps in general were starting to appear. An 1838 booklet of maps produced by Henry Drury Harness for a report on Irish railroads included one that simultaneously showed city populations as Proportional symbols and railroad traffic volume as a Flow map.[3][4]

Charles Joseph Minard became a master at creating visualizations that combined multiple variables, often mixing choropleth, flow lines, proportional symbols, and statistical charts to tell complex stories visually.[5]

The first modern bivariate choropleth maps were published by the U.S. Census Bureau in the 1970s.[6] Their often complex patterns of multiple colors has drawn acclaim and criticism ever since,[7] but has also led to research to discover effective design techniques.[8][9]

Starting in the 1980s, computer software, including the Geographic information system (GIS) facilitated the design and production of multivariate maps.[10] In fact, a tool for automatically generating bivariate choropleth maps was introduced in Esri's ArcGIS Pro in 2020.

Methods

There are a variety of ways in which separate variables can be mapped simultaneously, which generally fall into a few approaches:

A multi-layered thematic map, displaying minority proportion as a choropleth, and family size as a proportional symbol
  • A multi-layered thematic map portrays the variables as separate map layers, using different thematic map techniques. An example would be showing one variable as a choropleth map, with another variable shown as proportional symbols on top of the choropleth.
  • A correlated symbol map represents two or more variables in the same thematic map layer, using the same visual variable, designed in such a way as to show the relative combination of the two variables.
    • A bivariate choropleth map is the most common type of correlated symbol. Contrasting but not complimentary colors are generally used, so that their combination is intuitively recognized as "between" the two original colors, such as red+blue=purple.[9] They have been found to be more easily used if the map includes a carefully designed legend and an explanation of the technique.[11] A common legend strategy is a two dimensional matrix, divided into smaller boxes where each box represents a unique relationship of the variables.
    • A multivariate dot density map mixes dots of different colors in each district, typically representing separate subgroups of the overall population.[12]
  • A multivariate symbol map represents two or more variables in the same thematic map layer, using distinct visual variables for each variable. For example, a layer of cities might be symbolized with circles of proportional size representing its total population, and the hue of each circle representing the predominant source type of its electric power, akin to a nominal choropleth map.
  • A chart map represents each geographic feature with a statistical chart, often a pie chart or bar chart, which can include a number of variables.
A multivariate symbol map of the 2016 U.S. presidential election, using a combination proportional and chart symbol
A bivariate dot density map showing the distribution of the African American (blue) and Latino (red) populations in the contiguous United States in 2010.

The technique works best when the geography of the variable has a high degree of spatial autocorrelation, so that there are large regions of similar colors with gradual changes between them; otherwise the map can look like a confusing mix of random colors.[2]: 331  In general, bivariate maps are one of the alternatives to the simple univariate choropleth maps, although they are sometimes extremely difficult to understand the distribution of a single variable. Because conventional bivariate maps use two arbitrarily assigned color schemes and generate random color combinations for overlapping sections and users have to refer to the arbitrary legend all the time. Therefore, a very prominent and clear legend is needed so that both the distribution of single variable and the relationship between the two variables could be shown on the bivariate map.

See also

References

  1. ^ Nelson, J. (2020). Multivariate Mapping. The Geographic Information Science & Technology Body of Knowledge (1st Quarter 2020 Edition), John P. Wilson (ed.). DOI: 10.22224/gistbok/2020.1.5
  2. ^ a b T. Slocum, R. McMaster, F. Kessler, H. Howard (2009). Thematic Cartography and Geovisualization, Third Edn. Pearson Prentice Hall: Upper Saddle River, NJ.
  3. ^ Robinson, Arthur H. (Dec 1955). "The 1837 Maps of Henry Drury Harness". The Geographical Journal. 121 (4): 440–450.
  4. ^ Griffith, Richard John; Harness, Henry Drury (1838). Atlas to Accompany 2nd Report of the Railway Commissioners. Ireland.
  5. ^ Tufte, Edward (2006). Beautiful Evidence. Graphics Press.
  6. ^ Meyer, Morton A.; Broome, Frederick R.; Schweitzer, Richard H. Jr. (1975). "Color Statistical Mapping by the U.S. Bureau of the Census". The American Cartographer. 2 (2): 101–117. doi:10.1559/152304075784313250.
  7. ^ Wainer, Howard; Francolini, Carl M. (1980). "An Empirical Inquiry concerning Human Understanding of Two-Variable Color Maps". The American Statistician. 34 (2): 81–93. doi:10.1080/00031305.1980.10483006.
  8. ^ Olson, Judy M. (1981). "Spectrally encoded two-variable maps". Annals of the Association of American Geographers. 71 (2): 259–276.
  9. ^ a b Trumbo, Bruce E. (1981). "A Theory for Coloring Bivariate Statistical Maps". The American Statistician. 35 (4): 220–226. doi:10.1080/00031305.1981.10479360.
  10. ^ Dunn R., (1989). A dynamic approach to two-variable color mapping. The American Statistician, Vol. 43, No. 4, pp. 245–252
  11. ^ Olson, Judy M. (1981). "Spectrally encoded two-variable maps". Annals of the Association of American Geographers. 71 (2): 259–276.
  12. ^ Jenks, George F. (1953). ""Pointillism" as a Cartographic Technique". The Professional Geographer. 5 (5): 4--6. doi:10.1111/j.0033-0124.1953.055_4.x.

Other Literature

  • Jeong W. and Gluck M., (2002). Multimodal bivariate thematic maps with auditory and haptic display. Proceedings of the 2002 International Conference on Auditory Display, Kyoto, Japan, July 2-5.
  • Leonowicz, A (2006). Two-variable choropleth maps as a useful tool for visualization of geographical relationship. Geografija (42) pp. 33–37.
  • Liu L. and Du C., (1999). Environmental System Research Institute (ESRI), online library.