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CONCEPT

Intersectional Disaggregation

Timnit Gebru and Joy Buolamwini’s methodological principle that the design of an AI evaluation is itself a political act—and that a benchmark reporting a single aggregate accuracy score is structurally designed to hide the worst failures, which concentrate at the intersection of marginalized identities.
Aggregate accuracy is a way of hiding. A commercial face-recognition system that misclassifies darker-skinned women at thirty-four percent and lighter-skinned men at less than one percent can report an overall accuracy of ninety-eight percent if the test set is composed mostly of the latter group—and for decades, it was. The methodological contribution of Timnit Gebru and Joy Buolamwini’s 2018 “Gender Shades” study was not merely the finding of disparate performance but the insistence on a different way of looking: not by overall accuracy but by the intersection of skin tone and gender, the axes along which harms actually compound. This is intersectional disaggregation—the practice of breaking aggregate AI performance metrics down by the crossing of multiple identity dimensions simultaneously, because harms that are invisible at every single axis often become clearly visible at their intersection. A system audited only for gender bias or only for racial bias will systematically miss the darker-skinned woman, who sits at the crossing of both. A single-axis evaluation does not merely undercount her; it is structurally guaranteed to produce a result that does not report her experience at all. The principle extends far beyond face recognition: every large language model evaluated on aggregate benchmarks, every hiring algorithm tested for overall accuracy, every loan system assessed for general fairness, is subject to the same hiding mechanism unless its evaluation is explicitly designed to see the intersections.
Intersectional Disaggregation
Intersectional Disaggregation

In the [YOU] on AI Field Guide

The cycle insists that [YOU] on AI take the machine seriously on its own terms: to understand what it actually does rather than what it appears to do. Intersectional disaggregation is one of the sharpest tools for doing this. The smooth performance of AI systems in aggregate is one of the primary mechanisms by which their costs are concealed—concealed not by anyone’s deliberate deception but by the structural choice of what to measure and how to aggregate it. To disaggregate is to refuse the comfortable number and demand the honest one, and the honest number almost always reveals a distribution of benefit and harm that the aggregate conceals.

The concept connects directly to the cycle’s concern with who holds the pen when the future is being written. A benchmark is not a neutral instrument; it encodes assumptions about which group’s performance matters enough to be separately measured, and a benchmark that does not measure at intersections is a benchmark organized by the priorities of whoever designed it. The design of the evaluation is the first site of politics, upstream of the technology itself, and Gebru’s most lasting contribution may be the demonstration that treating the evaluation as a site of contestation is not methodological obstructionism but basic scientific rigor.

Origin

The concept emerges from the Black feminist tradition of intersectionality, first articulated systematically by Kimberlé Crenshaw in her 1989 and 1991 papers on how legal frameworks failed Black women by treating discrimination as either racial or gendered rather than recognizing that the two could compound in ways that produced a distinct and worse harm. Crenshaw’s framework was theoretical and legal; Gebru and Buolamwini operationalized it for machine learning evaluation. The methodological move—disaggregate not just by one axis but by the intersection of multiple axes—translated an insight from social theory into a measurement protocol, showing that intersectionality is not merely a matter of justice but a matter of accuracy. A measurement framework that cannot see the intersection cannot accurately describe the world.

The practical implementation in “Gender Shades” required building a new benchmark. The researchers found that the commercially available face-recognition benchmarks were overwhelmingly composed of lighter-skinned, predominantly male faces, so they built their own test set from the official parliamentary portraits of African and European countries, balanced by both skin tone and gender. This move demonstrated that the existing benchmarks were not neutral sampling frames; they were politically loaded instruments that measured the performance of systems on populations the systems were designed for, which guaranteed that the populations the systems failed would be invisible in the evaluation. Building the benchmark that could see the harm was itself the scientific contribution.

Key Ideas

The benchmark is a political instrument. The choice of what to measure, at what level of granularity, for which populations, under which conditions, determines what a system appears to do. A system can be genuinely dangerous to a specific population while appearing accurate by every published benchmark, because none of the benchmarks was designed to measure its performance on that population. Intersectional disaggregation refuses the appearance of accuracy as evidence of actual accuracy; it demands that the evaluation match the distribution of harm rather than the distribution of the test set’s designers.

Harms compound at intersections. The distinctive insight from the intersectional tradition is that multiple axes of marginalization do not simply add; they multiply. A system that is ninety-eight percent accurate for both women and Black people, measured separately, may be sixty-five percent accurate for Black women measured at their intersection, because the specific combination of features the system fails on is one that neither single-axis analysis would have caught. This compounding is not anomalous; it is the expected structure of a system trained on data that overrepresents some groups and underrepresents others, evaluated against benchmarks designed by those who belong to the overrepresented groups.

Representation is an epistemic condition, not a social nicety. Gebru’s argument that a homogeneous AI workforce produces systems with systematic blind spots is not primarily a fairness argument but an accuracy argument. A team that has not lived the harm that a system can cause will not know to test for it, will not know which evaluation design would reveal it, and will not know which benchmark omissions are load-bearing. The invisible labor of designing evaluations that can see what the system does to people at the margins is labor that a homogeneous team is structurally unlikely to perform, because the members of that team are unlikely to be the people the margins affect.

Further Reading

  1. Joy Buolamwini & Timnit Gebru, “Gender Shades: Intersectional Accuracy Disparities in Commercial Gender Classification,” FAT* 2018
  2. Kimberlé Crenshaw, “Mapping the Margins: Intersectionality, Identity Politics, and Violence against Women of Color,” Stanford Law Review (1991)
  3. Timnit Gebru et al., “Datasheets for Datasets,” Communications of the ACM (2021)
  4. Safiya Umoja Noble, Algorithms of Oppression: How Search Engines Reinforce Racism (NYU Press, 2018)
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