A Brief Overview of Gender Bias in AI
The Gradient 2 years ago
Research papers quantify gender biases in AI systems across word embeddings, facial recognition, language models, and image generators, with studies showing disparities like 34.7% error rates for darker-skinned female faces in commercial classifiers versus 0.8% for lighter-skinned males. Key benchmarks include the 2016 word embedding study revealing sexist analogies, the 2018 Gender Shades study of facial classifiers, and the 2021 BBQ dataset showing language models reinforcing harmful stereotypes 77% of the time. These measurement frameworks enable companies to audit and mitigate biases, though research gaps remain as models optimize only for specific tested biases while countless other types persist unmeasured.