Tag Archives | Racial Classification

A Roadmap for Inequality Research: Transparency, Intersectionality, and Multiple Measures of Race

Emma Williams-Baron, Aliya Saperstein

Sociological Science July 9, 2026
10.15195/v13.a32


Most quantitative studies of U.S. inequality rely on single measures of race and do not transparently describe them. However, inconsistencies between measures can yield conclusions that differ both substantively and statistically. We ask: when faced with multiple ways to categorize respondents, how should researchers choose? We conduct intersectional analyses of five inequality outcomes, using the 1979 National Longitudinal Survey of Youth, which offers several measures of self-identification and external classification. Strikingly, we find the survey’s screener race variable, ubiquitous in prior research, is never empirically preferred based on model fit across outcomes spanning the labor market (wages, salary, and unemployment), health (depression), and education (school discipline). Instead, the top-performing measure varies by gender, outcome, and fit statistic. The range of potential researcher decisions and the absence of a clear gold-standard highlights the need for greater transparency and more thoughtful decision-making when researchers operationalize race—whether racial categorization is central to the analysis or included primarily as a control variable. To that end, we offer a roadmap of key considerations inequality researchers can consult when designing their approach.

Creative Commons LicenseThis work is licensed under a Creative Commons Attribution 4.0 International License.


Emma Williams-Baron: Department of Sociology, Stanford University. E-mail: emmajwb@stanford.edu.
Aliya Saperstein: Department of Sociology, Stanford University. E-mail: asaper@stanford.edu.

Acknowledgments: We are grateful to our colleagues in the gender and inequality workshops at Stanford University for their helpful comments and suggestions, and to Steve McClaskie for responding to inquiries about the NLSY. Previous versions of this paper were presented at the 2024 American Sociological Association annual meeting and at a 2023 conference on racial inequality in education research hosted by NWEA in Portland, OR. This material is based upon work supported by the National Science Foundation Graduate Research Fellowship Program under Grant No. DGE-1656518. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the authors and do not necessarily reflect the views of the National Science Foundation.


Supplemental Materials

Reproducibility Package: Data and code for reproducing the results presented in this article are publicly
available in an Open Science Framework repository here: https://doi.org/10.17605/OSF.IO/K3RZT. Data may also be accessed through the NLSY Investigator site at: https://www.nlsinfo.org/investigator.


  • Citation: Williams-Baron, Emma, Aliya Saperstein. 2026. “A Roadmap for Inequality Research: Transparency, Intersectionality, and Multiple Measures of Race” Sociological Science 13: 825-863.
  • Received: September 20, 2025
  • Accepted: May 18, 2026
  • Editors: Arnout van de Rijt, Kristian B. Karlson
  • DOI: 10.15195/v13.a32


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The Multiracial Complication: The 2020 Census and the Fictitious Multiracial Boom

Paul Starr, Christina Pao

Sociological Science December 3, 2024
10.15195/v11.a40


The Census Bureau set off reports of a “multiracial boom” when it announced that, according to the 2020 census, multiracial people accounted for 10.2 percent of the U.S. population. Only the year before, the bureau’s American Community Survey had estimated their share as 3.4 percent. We provide evidence that the multiracial boom was largely a statistical illusion resulting from methodological changes that confounded ancestry with identity and mistakenly equated national origin with race. Under a new algorithm, respondents were auto-recoded as multiracial if, after marking a single race, they listed an “origin” that the algorithm did not recognize as falling within that race. However, origins and identity are not the same; confounding the two did not improve racial statistics. The fictitious multiracial boom highlights the power of official statistics in framing public and social-science understanding and the need to keep ancestry and identity distinct in both theory and empirical practice.
Creative Commons LicenseThis work is licensed under a Creative Commons Attribution 4.0 International License.

Paul Starr: Sociology Department, Princeton University
E-mail: starr@princeton.edu

Christina Pao: Sociology Department, Princeton University
E-mail: christina.pao@princeton.edu

Acknowledgements: Presentations by Ricardo Lowe and colleagues helped inform the empirical strategy in our article. We also thank participants in the May 2024 Conference of the American Association for Public Opinion Research for their responses to our research.

Reproducibility Package: R code for replication is available on the Open Science Framework (OSF), https://osf.io/8ebup/?view_only=67a953b996684d128c9384d4841ed1c5. Data are available from IPUMS USA (Ruggles et al. 2024): https://usa.ipums.org/usa/index.shtml

  • Citation: Starr, Paul, and Christina Pao. 2024. “The Multiracial Complication: The 2020 Census and the Fictitious Multiracial Boom.” Sociological Science 11: 1107-1123.
  • Received: September 17, 2024
  • Accepted: October 21, 2024
  • Editors: Ari Adut, Michael Rosenfeld
  • DOI: 10.15195/v11.a40


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