How To Create More Diverse, Equitable, and Inclusive Data Visualizations

Reposted from February 2022

When we visualize information, we make a series of decisions which affect the way that viewers process the information in our charts, maps, and graphs. Sometimes they don’t feel like decisions at all. We go with the default settings in the application we are using. Or we just do something the way it’s usually done. But a more diverse, equitable, and inclusive approach to presenting and visualizing data requires us to make those decisions more consciously and deliberately. Jonathan Schwabish and Alice Feng of the Urban Institute provide some helpful tips, based on the Urban Institute’s own style guide, which you can apply the next time you present data.

Here is a summarized version of Schwabish and Feng’s article.* And here is my 60-second version of their recommendations:

  • Use people-first language in titles, text, and labels associated with charts, maps, and graphs. For example, use “people with disabilities” rather than “disabled people.” Also the Urban Institute does not refer strictly to skin color. For example, they refer to “Black people” not “Blacks.”

  • Order and present groups purposefully. The first group shown in a table or the first bar in a chart can affect how readers perceive the relationship or hierarchy among groups. For example, if the first group is “Men,” then it may appear that men are the default group against which other groups should be compared. One way to prevent viewers from making certain comparisons is to display groups in side-by-side charts (aka “small multiples” charts) rather than on a single chart. In general, make ordering and grouping decisions to promote certain comparisons and prevent others.

  • Point to missing groups. If certain groups are missing from the data, explain why in text boxes or footnotes. Also add information on groups included in “Other” categories and consider providing a more specific label than “Other” which can have an exclusionary connotation.

  • Do not use color palettes that reinforce gender or racial stereotypes. This one may seem obvious, but it bears repeating. Also, the Urban Institute’s color palette is accessible to people with certain color vision deficiencies, and the contrast between those colors and white and black text meet basic accessibility guidelines.

  • Depict a variety of races and genders when using icons and avoid icons that make inappropriate depictions of people or communities or reinforce stereotypes such as showing traditionally feminine icons to depict nurses or traditionally masculine icons to depict bosses.

  • Find ways to show the people behind the data. Data visualizations are, by definition, abstractions of larger realities. But in the process of abstracting, we may obscure the lived experiences of the real people whom the data represent. Visualizations can remind viewers about the individuals behind the data by, for example, depicting them as individual circles rather than aggregating them in a single bar.

* The full paper has been published as an OSF Preprint and can be accessed here.


Let’s talk about YOUR data!

Got the feeling that you and your colleagues would use your data more effectively if you could see it better? Data Viz for Nonprofits (DVN) can help you get the ball rolling with an interactive data dashboard and beautiful charts, maps, and graphs for your next presentation, report, proposal, or webpage. Through a short-term consultation, we can help you to clarify the questions you want to answer and goals you want to track. DVN then visualizes your data to address those questions and track those goals.


Data Viz Resources You Should Know: We All Count

In my IRL and virtual travels, I’ve come across many cool resources both for those wanting to stick their toes in data viz (and related topics) and those ready to dive into the deep end. So I’ve been thinking about creating a resource list on my website. The problem is: I sort of hate resource lists. They usually overwhelm me. They offer up too many resources which are poorly described or not described at all. And I end up hopping into a bunch of time-sucking rabbit holes and emerge cranky.

So I’m going to try slowly building a highly-curated resource list through 60-Second Data Tips. I will occassionally write a tip describing a particular resource, including why I think it’s cool. And I’ll link each of these tips to a resource list on my website. My first recommended resource is: We All Count.

What is it?

We All Count is a project to increase equity in data science. Data equity, according to We All Count, involves “principles of fairness, transparency, inclusion and justice regardless of who may be experiencing them. Overt or unintentional racism, sexism, classism, heteronormativity, colonialism, ableism, ageism, and religious intolerance are just a few factors that can skew the equity of any data project.” We All Count does its work through:

  1. A data equity community including a newsletter and community forum;

  2. Developing tools, case studies, practices, and systems to improve equity in data science including the Data Equity Framework which is a systematic way of looking at data projects;

  3. Training people in how to bring data equity to their work; and

  4. Consulting with organizations on data equity issues.

Who’s it for?

It’s mostly for data scientists looking for ways to collect and analyze data in a more equitable way. However, the site has some great tools for nonprofits concerned about using data more equitably including a Data Jargon Decoder. They also offer a series of free webinars about current issues in data science which sometimes include topics of interest to anyone dealing with data, not just data scientists. And you can ask questions about how to collect, interpret, and present data in an equitable way on their online forum.

Who’s behind it?

Heather Krause started We All Count. Heather is a mathematical statistician with experience working on complex data problems and producing real-world knowledge.

Why I think it’s cool

We All Count is focused on practical solutions to knotty data equity issues. They don’t just complain. They offer up real-world solutions to issues such as how to collect demographic data on surveys.


Let’s talk about YOUR data!

Got the feeling that you and your colleagues would use your data more effectively if you could see it better? Data Viz for Nonprofits (DVN) can help you get the ball rolling with an interactive data dashboard and beautiful charts, maps, and graphs for your next presentation, report, proposal, or webpage. Through a short-term consultation, we can help you to clarify the questions you want to answer and goals you want to track. DVN then visualizes your data to address those questions and track those goals.


How To Create More Diverse, Equitable, and Inclusive Data Visualizations

When we visualize information, we make a series of decisions which affect the way that viewers process the information in our charts, maps, and graphs. Sometimes they don’t feel like decisions at all. We go with the default settings in the application we are using. Or we just do something the way it’s usually done. But a more diverse, equitable, and inclusive approach to presenting and visualizing data requires us to make those decisions more consciously and deliberately. Jonathan Schwabish and Alice Feng of the Urban Institute provide some helpful tips, based on the Urban Institute’s own style guide, which you can apply the next time you present data.

Here is a summarized version of Schwabish and Feng’s article.* And here is my 60-second version of their recommendations:

  • Use people-first language in titles, text, and labels associated with charts, maps, and graphs. For example, use “people with disabilities” rather than “disabled people.” Also Urban does not refer strictly to skin color. For example, they refer to “Black people” not “Blacks.”

  • Order and present groups purposefully. The first group shown in a table or the first bar in a graph can affect how readers perceive the relationship or hierarchy among groups. For example, if the first group is “Men,” then it may appear that men are the default group against which other groups should be compared. One way to prevent viewers from making certain comparisons is to display groups in side-by-side charts (aka “small multiples” charts) rather than on a single chart. In general, make ordering and grouping decisions to promote certain comparisons and prevent others.

  • Point to missing groups. If certain groups are missing from the data, explain why in text boxes or footnotes. Also add information on groups included in “Other” categories and consider providing a more specific label than “Other” which can have an exclusionary connotation.

  • Do not use color palettes that reinforce gender or racial stereotypes. This one may seem obvious, but it bears repeating. Also, Urban’s color palette is accessible to people with certain color vision deficiencies, and the contrast between those colors and white and black text meet basic accessibility guidelines.

  • Depict a variety of races and genders when using icons and avoid icons that make inappropriate depictions of people or communities or reinforce stereotypes such as showing traditionally feminine icons to depict nurses or traditionally masculine icons to depict bosses.

  • Find ways to show the people behind the data. Data visualizations are, by definition, abstractions of larger realities. But in the process of abstracting, we may obscure the lived experiences of the real people whom the data represent. Visualizations can remind viewers about the individuals behind the data by, for example, depicting them as individual circles rather than aggregating them in a single bar.

* The full paper has been published as an OSF Preprint and can be accessed here.


Let’s talk about YOUR data!

Got the feeling that you and your colleagues would use your data more effectively if you could see it better? Data Viz for Nonprofits (DVN) can help you get the ball rolling with an interactive data dashboard and beautiful charts, maps, and graphs for your next presentation, report, proposal, or webpage. Through a short-term consultation, we can help you to clarify the questions you want to answer and goals you want to track. DVN then visualizes your data to address those questions and track those goals.